1. Introduction
Agriculture and livestock systems undoubtedly play a key role in supporting human well-being and livelihoods. However, anthropogenic pressure and associated land degradation result in a loss of biodiversity and a reduction in the variety and level of ecosystem services (ESs) [
1,
2,
3,
4]. Regarding mountain ecosystems, empirical research suggests that deforestation and forest degradation lead to depleted soil infiltration rates and water infiltration capacity [
5]. The shift in the frequency distribution of erosion rates depends on the degree of human disturbance of the native vegetation [
6,
7], and the number of large floods increases strongly with accelerated deforestation [
8,
9,
10,
11]. Although in general terms the expansion of farmland has increased the value of some essential provisioning ESs and provided some economic benefits [
12], it has also significantly affected human well-being [
2,
3,
12], particularly in terms of the impact on land degradation [
13]. This effect has been especially intense in tropical countries [
14].
Restoration efforts aim at recovering the original characteristics of an ecosystem that was previously degraded, damaged, or destroyed by human intervention. It was suggested in [
15] that ecological restoration increases biodiversity levels by an average of 44%. Empirical research demonstrates a significantly increasing trend in the ecosystem carbon sequestration service [
16,
17,
18], erosion and flood control services [
5,
9,
10,
19,
20], and landscape forest connectivity [
21]. Restoration programs, followed by sustainable land-use management, can improve, both the provisioning of services, and people’s well-being [
2,
3,
15]. However, these multiple restoration goals can also diverge and conflict [
3].
Restoration goals, strategies, and actions should be approached carefully, considering site-specific environmental conditions as a means for generating the expected ecological synergies. Furthermore, restoration strategies face the complex challenge of increasing the provisioning of services, such as food production, for an expanding population [
22], while simultaneously conserving or enhancing biodiversity and other types of ES [
2,
23]. Science-based experience in some large-scale restoration projects (e.g., the Atlantic Forest Restoration Pact in Brazil) revealed that a successful restoration strategy needs to have a bottom-up decision-making approach, involving a range of stakeholders, including landowners, smallholders, nongovernment organizations, local government leaders, and indigenous and community groups [
2,
24,
25,
26].
To address all of these targets, restoration actions need the support of financial incentives, and most reforestation projects have shown net benefits, in both developed and developing countries [
18,
27,
28]. Nonetheless, in broader terms, the efficiency of conservation and economic outcomes, often using cost-effectiveness as a proxy, should never outweigh the social equity dimensions and non-market value [
29,
30,
31]. Ultimately, such financial incentives are usually instrumentalized in a subsidy-like approach, which means conditional cash payments aiming to compensate for the possible costs of alternative environmental land-use stewardship. These incentive mechanisms are conceptualized as payments for ecosystem services (PES) around the world. Even though they can show a wide range of specific characteristics, PES schemes have two fundamental attributes: voluntariness and additionality.
Unlike traditional command-and-control environmental policies, PES programs represent a novel paradigm by introducing a voluntary approach. Additionality in this context is commonly defined as the measured outcome of a policy or project, in addition to what might have occurred in the absence of a PES scheme [
32]. However, this concept has been mostly applied in strictly environmental terms as “the net impact of the biophysical provision of ecosystem services, in comparison with the baseline scenario or hypothetical situation where the PES scheme is not in place” [
33]. According to [
34], environmental additionality is positively influenced by three factors: spatial targeting, payment differentiation, and strong conditionality.
Accepting the existence of a polarized academic discussion surrounding efficiency versus equity, this debate has accomplished an expansion of the capabilities, dimensions, and limits of Wunder’s pioneering conceptualization of PES [
35]. Therefore, other attributes such as economic fairness and personal well-being should be taken into account. For example, given a compensation criterion approach, payments should compensate landholders for lost benefits related to the provision of environmental services and be differentiated according to the cost of such provision. Their willingness to accept (WTA) compensation for the services they provide is largely determined by the degree to which their livelihood depends on the land covered by the program. This, in turn, affects the opportunity cost of supplying the services. In addition, WTA is also a function of the potential on-farm benefits derived from the promoted land use change [
33].
The pioneering nationwide PES program in Costa Rica is mostly recognized with regard to the conservation of remaining forests. In fact, from its inception in 1997 until 2018, almost 90% of the land covered was for strict forest protection (over one million hectares), while payments for reforestation were received for about 70,000 hectares [
36]. Several studies have evaluated the impact of the program on reducing deforestation rates [
37,
38,
39], on the effects on poverty and equity [
40,
41,
42], and on the overall efficiency [
42,
43,
44]. However, there is little scientific evidence about the preference of landholders for enrolling in a PES arrangement for reforestation purposes on their own property. There is also scarce information about the links between payments, land opportunity costs, and landholders’ economic valuation of ES.
In this study, a micro-scale PES scheme is assessed with the support of a GIS-based spatial dataset in the Claro River sub-watershed (southern Costa Rica). Discrete choice modeling was carried out to elicit the preferences of landholders at the site regarding alternative restoration options, giving several ESs as attributes in the choice set. Choice experiments (CEs) are often used to examine human-induced changes in an ecosystem, represented by a set of attributes for which people can establish their preferences [
45]. Closely related to this study, CEs have been applied as a method to investigate the preferences of farmers for participating in environmental incentive-based mechanisms in developing countries [
46,
47,
48,
49,
50,
51,
52,
53]. Most of them focused on analyzing the factors that can influence potential enrolment in hypothetical PES contracts, and just a few include the perception of the benefits of ecosystem services [
49,
52]. Unlike other studies, ours includes a place-based approach that complements the economic analysis from a micro-scale perspective.
This research was aimed at investigating some of the main shortcomings of the national PES program in Costa Rica reported by researchers and scholars, in terms of the lack of a spatial targeting approach, landholder WTA, and opportunity cost data. Specifically, this paper tries to respond to four questions: (1) Are landholders in the Claro River sub-watershed willing to implement reforestation projects by reducing cattle grazing pasture areas? (2) What is the minimum level of willingness to accept compensating payment to join a hypothetical PES program? (3) To what extent do current payments for reforestation reflect current land opportunity costs? (4) Could the estimated landholders’ marginal economic valuation of determined ES could be endogenized into a micro-scale PES scheme?
2. An Overview of the Nationwide PES Program in Costa Rica
Costa-Rica’s national-scale PES program emerged in 1995 from a convergence of various factors that led to the 1995 Forestry Law reform, which entailed a necessary increased level of restrictions on legal tree extraction. The program bundles together the provision of four main ESs: carbon sequestration, biodiversity protection, water regulation, and landscape beauty. It provides direct cash payments to private landowners for different types of five-year contracts: forest protection, reforestation, sustainable forest management, and agroforestry [
42]. The National Forestry Fund (FONAFIFO) is the institutional mediator responsible for administrating the PES program. This mediating role can be described as the process by which the beneficiaries of the program give their acquired rights to the ES to FONAFIFO, which then sells them to potential buyers [
54].
The program continues to be one of the most advanced in terms of experimentation in governance [
55]; however, its environmental effects have often been questioned. Empirical studies suggest it has a minimal impact on reducing deforestation rates [
37,
38,
39]. With respect to the socio-economic outcomes, apart from indigenous territories, most of the payments are captured by relatively wealthy landowners [
41,
56]. According to [
40], there is no evidence of improvements in tangible household well-being, and it also does not appear to have benefited participants in terms of better means of living. The program does not have an explicit social component, despite it being a government-led initiative [
36].
With respect to the policy criterion of conditionality, FONAFIFO established a pragmatic approach, where the extension of forest land is used as a proxy for ES [
42]. Furthermore, and beyond the relative or even minimal impact on reducing deforestation rates, the outcome of the program in terms of additionality would require constructing a baseline dataset and conducting a systematic modeling analysis in the absence of a program for each PES contract. It was noted in [
57] that a PES may result in more additionality if it is properly reoriented towards enhancing landscape restoration.
Additionality is positively influenced by spatial targeting; therefore, a land-use approach would allow FONAFIFO to allocate the optimal resources in order to prioritize and maximize the spatial provision of ES. Several studies [
57,
58,
59] strongly recommend using a landscape approach, along with socio-economic and ecological indicators, for a more intensive and adequate assumption of an additionality principle in the national policy priorities. Moreover, the key factor for ensuring that a PES scheme is effective relies on the extent of the alignment of payments received by landholders with the additional enhancement of ES over the status quo scenario [
60].
The decision on final levels of payments to be provided by nationwide public programs is usually arbitrary and will inevitably be influenced by administrative resolutions based on the available budget [
42]; in fact, actual payments for reforestation still reflect levels prior to the program’s introduction, and payments for forest protection were initially established on the then current renting price of pastureland. Current incentives are based approximately on national averages of the opportunity costs of forgone cattle pasture [
58]. However, in theoretical terms, the payment level should reflect two important factors: (1) the estimated value of the ES provided by the forest, and (2) the opportunity cost for the landowner associated with participating.
Another debated subject highlighted by scholars regarding the Costa Rican PES scheme is the strong dependence on fixed payments [
55,
57,
59], regardless of the spatial variability in the provision of environmental services or the cost of the required management practices to different landholders [
54]. The method of accounting is determined by bundling the four officially selected ESs (carbon sequestration, landscape beauty, biodiversity conservation, and water protection). In this way, each piece of land, regardless of its particular ES value, receives a fixed payment. More recently, payment levels for forest protection have introduced differentiation for areas that are hydrologic hotspots. In addition, the reforestation category distinguishes four modalities: reforestation with fast-growing species, medium-growing species, native species, and natural regeneration. As an alternative to bundling, the layering of ecosystem services refers to separating payments for each site-specific ES to be provided in a packaged scheme [
61].
There are also significant shortcomings in the PES design, and several improvements have been suggested, focusing on the development of differentiated payments that would reflect different opportunity costs. Considering that this type of design might be technically difficult, auctions have been encouraged [
59] as a means of revealing opportunity costs [
42], although implementing them would necessarily be costly. Another alternative for revealing opportunity costs, as well as eliciting landholders’ preference for enrolment and level of WTA, is through a CE approach.
In addition, the diverse range of factors promoting or preventing landowner participation in the PES program have also been examined. According to [
62], the Costa Rican case illustrates that participation is led by landowners and is greatly influenced by their capacity to cover transaction, legal, and information costs, and to satisfy land tenure requirements. However, one of the stricter institutional requirements of FONAFIFO, which limits access to enrolment in the program, is the lack of legal property titles among smaller landholders [
42]. It was found in [
63] that a combination of poor environmental conditions for agriculture and the opportunity cost calculus of landowners drives the decision to enroll in the program.
One more important constraint, often highlighted in theoretical and empirical studies, is the high transaction costs. PES contracts commonly incur two types of transaction costs: (1) those assumed by FONAFIFO that might discourage, even by legal means, the participation of smallholders [
43]; and (2) those inevitably assumed by the eventual beneficiaries, which will necessarily affect their initial interest in participating in the program [
64]. The costs assumed by beneficiaries are the greatest barrier to participation by the most vulnerable in developing countries [
64,
65,
66]. Transaction costs include all expenses for contract establishment and maintenance (e.g., travel expenses, information gathering, the design of a management plan, and external monitoring). According to [
67], estimates of transaction costs borne by participants vary from 12 to 18% of the total payments.
Beyond the national program, there are two remarkable experiences with local PESs in Costa Rica. On the one hand, the Heredia watershed payment scheme, managed by an ad hoc public enterprise and partially funded by a private corporation, provides payments to landowners to avoid land degradation of the area upstream of the watershed, where water sources are located. Although this scheme incorporates an explicit place-based approach, focusing on the provision of hydrological services within a watershed, it fails in not taking an additionality approach or adding other types of ES [
68]. On the other hand, the RISEMP project scheme, sponsored by the World Bank and the Global Environment Facility (GEF) and coordinated by the Center for Tropical Agriculture, Research and Education (CATIE), facilitates payments to livestock producers conditioned on the adoption of silvopastoral practices. This project succeeds in at least two aspects: (1) it introduces a differentiated payment scheme reflecting differences in the intensity of silvopastoral efforts, and (2) it layers two ESs (biodiversity and carbon sequestration) [
69,
70].
4. Results
4.1. Descriptive Statistics of Respondent Characteristics
Based on the field survey, the majority of interviewed households were entirely dedicated to cattle ranching (74%) and the others to dual purpose cattle ranching, for both meat and milk production. Specifically, the revenue of ranching holdings is generated from the sale of animals, while in dual-purpose farming income is obtained from a combination of selling animals (occasionally) and milk (including its use in cheese production).
Table 2 shows a summary of descriptive statistics for the survey respondents. About 74% of the respondents were male, and the respondents’ average age was over 49. It is relevant to highlight that the female respondents were mainly young women, fully involved in farming duties. About 36% of the households had their place of residence in nearby towns and villages of San Vito, Concepción, Aguabuena, and Rio Claro. These correspond to the wealthiest households, which own the largest land parcels and the most livestock units. Some of residents were professionals or perform alternative jobs in the towns. Out of the total survey population, only 25% had property rights, a proportion in agreement with the data collected in nearby Osa Peninsula [
42]. As mentioned above, this is one of the main constraints on having access to credit and PES schemes, especially for the reforestation category.
The average size of the pasture area within the total land parcel was reported to be about 38 hectares, although the high value of standard deviation (~37 ha) reveals a wide range of pastureland area across the properties, with an average number of cattle units of about 28. The vast majority of land parcels contain fragments of forest cover, either primary, secondary, or riparian, with an average size of about 30 hectares. This feature indicates a concern for the environment and a perception of forest benefits. There is no spatial evidence in the last decade of the clearing of forests for agriculture or livestock purposes [
80].
4.2. Random Parameter Logit Model
The estimation results of the RPL models, both with and without respondent characteristics, are reported in
Table 3. The values of the AIC statistic for both models reveal an improvement in the degree of goodness-of-fit for the model with covariates. Therefore, the latter was considered for further analysis. The selected respondent characteristics or covariates were those that reached the highest statistical significance. Two random parameters for attributes (ASC and AREA) were included and specified as normally distributed. The model also contains interaction effects between random variables and covariates. The payment attribute is fixed and measured in present value terms so that meaningful estimates of WTA can be calculated [
46].
The status quo parameter (ASC) is negative, implying that, on average, most of the landholders were interested and willing to participate in a restoration initiative over the status quo option. As expected, an almost equal distribution of choices was found between the two hypothetical, generic restoration alternatives presented to the respondents. The first alternative was chosen in 36.5% of cases and the second in 35.7% of cases, confirming the absence of selection bias in the hypothetical alternatives due to design error [
52].
The positive signs and statistical significance of the coefficient estimates for the ES attributes (apart from BIO) indicate a higher likelihood that a landholder would participate in a restoration program. The erosion control (ERO) and water availability (WATER) attributes show high statistical significance and a similar coefficient magnitude, with ERO slightly more preferred than WATER. The negative sign of the AREA attribute, which describes the maximum portion of pastureland that farmers would be willing to convert to reforestation, indicates that the greater its value, the lower its utility to respondents. This sign is expected, indicating that households obtain a regular income from livestock production.
The incorporation and accounting of unobserved preference heterogeneity among respondents by allowing model parameters to vary randomly across individuals is partially explained by the presence of statistically significant estimates of their standard deviations [
110] registered by the ASC (in the model without covariates) and AREA random parameters. In order to explore possible sources of heterogeneity, several interactions among the attributes and socioeconomic characteristics of the respondents were tried, but only the ones depicted in
Table 3 were found to be significant. The interaction between ASC and the dual-purpose scheme shows a positive sign, which may indicate that farmers working under this scheme are less likely to participate in a restoration program. In addition, the interaction between ASC and pastureland size reveals that the larger the size, the higher the probability that the current situation (status quo) would be chosen (
p < 0.05).
The implication of the negative sign for the interaction between the AREA attribute and the dual-purpose scheme is that landholders using this scheme are more likely to set aside a smaller proportion of pastureland for reforestation purposes. The significance and negative sign of ASC indicates that the utility for respondents is higher for the two hypothetical, generic environmental alternatives than the status quo option when everything else is held constant. In other words, the majority of respondents showed a strong preference for improving the status quo scenario beyond what was depicted by the proposed attributes shown on the choice cards [
111].
4.3. Latent Class Logit Model
In contrast to RPL, the LC model allows for the detection of groups with homogenous behavior within the sample of respondents. Hence, the model assumes that the landholders’ preferences are similar within classes and different between them. The choice of the optimal number of segments with heterogeneous preferences was based on the AIC statistics, although as suggested in [
112], it is better determined through the Bayesian information criterion (BIC). In addition, it was recommended in [
102] to assess the values of statistical significance, signs and magnitude of estimated parameters, and cautiously observe the socioeconomic characteristics of the target population [
113].
Applying all of these criteria in this study resulted in two groups showing a clearly differentiated behavioral status. ASC was coded as for the RPL model.
Table 4 reports the parameter estimates for each class and the class membership predicted function based on the socioeconomic covariates.
According to the results of the LC model estimates, 38.7% of the respondents belong to class 1 and the remaining 61.29% to class 2. The respondents in class 1 did not make their choices depending on the ES attributes, as the estimated coefficients were not statistically significant. Furthermore, they seemed to express a strong preference for maintaining the largest portion dedicated to pastureland, as shown by the magnitude and significantly negative value of the AREA coefficient. In addition, class 1 displays a higher sensitivity to the payment attribute compared with class 2. In summary, the profile of respondents in class 1 demonstrates a relatively reluctant attitude towards the proposed restoration alternatives. In contrast, the pattern of preferences of class 2 indicates that these individuals have an explicit environmental concern, as shown by the significantly positive values of the ES attributes and the significance and negative sign of ASC. In addition, this class is less sensitive to payment levels. In sum, class 2 is defined by similar average preferences as found in the RPL model.
The estimated coefficients of the membership equation provide information about the sources of preference heterogeneity across both classes. The membership function coefficients for class 1 are normalized to zero, in order to be able to identify the remaining coefficients, hence the membership equation for class 2 has to be evaluated relative to class 1. The positive sign of the pastureland size variable indicates that individuals who have larger pasturelands are more likely to belong to class 2. This result is reasonable, given the fact that landholders with larger properties are more likely to implement restauration initiatives, compared with households that have smaller land parcels, and therefore a higher dependency on land-use resources. The majority of these households are involved in dual-purpose activities, and their land parcels have a smaller average size than those involved solely in cattle ranching. This interpretation is consistent with the significance and negative sign of the dual-purpose variable, which indicates that households using this farming regime are more likely to belong to class 1. The positive sign of the forest size variable implies that landholders with larger parcels of forest are more likely to belong to class 2. With regard to the age variable, younger people are more in favor of implementing restoration initiatives than older people.
4.4. Marginal Value of Attributes and Welfare Change
As a result of the logit transformation of the econometric calculation of the utility function, the coefficient estimates can be interpreted as the relative contribution of a unit change in a particular attribute to the probability that a given choice is made while holding everything else constant. In theory, willingness-to-pay (WTP) estimates are determined by calculating the ratio of an attribute’s marginal utility to the marginal utility of income [
114]. The estimated coefficient on the payment attribute
generated by both RPL and LC models can be interpreted as the marginal utility of income [
45]. For linear attribute parameters, the marginal willingness to pay (mWTP) equals the negative ratio of the respective attribute coefficient
and the coefficient of the payment attribute
.
This study assumes the payment attribute to be fixed and not randomly distributed, so the parameters and distributions for WTA compensation can be easily estimated [
101,
104,
115,
116]. In addition, the payment vehicle is defined as a compensation amount, so that the denominator of Equation (5) will be positive, and therefore the corresponding ratio or “implicit price” indicates a WTA compensation amount.
In order to examine a broader meaning of mWTA estimates, a common method is to calculate the marginal individual welfare changes or compensating surplus (
CS) related to different policy scenarios by using the formula provided in [
114]:
where
indicates utility at the status quo,
indicates the utility of a determined policy scenario, and
is the parameter estimate of income. For this calculation, it is assumed that the utility is linear and separable into attributes.
The WTA estimates were calculated for the different attributes of the model by using Equation (5) from RPL models, both with and without covariates, and are reported in
Table 5. The values are measured in CRC/ha/year for a unit increase in attribute level. The monetary values reveal few differences among the ecosystem service attributes, but a remarkable difference in the ASC attribute. The two RPL model estimates denote similar differences between their respective coefficients (see
Table 3). In this case, the ASC attribute was previously defined as a random variable with a normal distribution, and as the payment level is fixed, the respective WTA amount will also be normally distributed, which accounts for statistically significant standard deviations across the respondents. The preference heterogeneity among respondents is reflected by a significant difference in WTA estimates [
116].
The positive sign of the marginal rate of substitution for the environmental attributes indicates that, with everything else being equal, respondents would be better off on average with an increase in the levels of those attributes. For a 1% improvement in the provision of ERO, farmers on average would be willing to pay a premium of 1413 CRC/ha/year (approximately 2.54 USD/ha/year). Similarly, for a 1% improvement in the provision of WATER, farmers on average would be willing to pay 1222 CRC/ha/year (approximately 2.17 USD/ha/year). All of these monetary values can also be interpreted in terms of existing and future bequest values, representing the economic importance that landholders assign to the enhancement of ecosystem services for present and future generations.
The marginal rate of substitution for the AREA attribute represents a significant feature. In this case, as noted above, AREA refers to the maximum portion of pastureland that landholders would be willing to give up in order to implement restoration initiatives. Hence, for a 1% increase in the portion of pasture area for restoration purposes, landholders on average would be willing to accept at least CRC 5227 (approximately USD 9.38) per hectare per year (RPL model without covariates) and CRC 5519 (approximately USD 9.90) per hectare per year (RPL model with covariates). The ASC monetary value suggests a baseline payment to consider participating in a restoration initiative (irrespective of the attributes considered in the model).
The welfare values of potential restoration scenarios were estimated by applying Equation (6) with the results of the RPL model with covariates. Three hypothetical policy scenarios were evaluated, reflecting the different degrees of implementation and environmental effects of the restoration strategies (strong, medium, and weak).
Table 6 reports the attribute levels and compensating surplus estimates for each scenario. The status quo scenario is related to the current grazing livestock and the attribute levels are set to zero, so that the potential negative environmental impact is not considered for comparison purposes. The negative sign of the compensating surplus (CS) estimates implies, in practical terms, the requirement of an additional incentive payment for landholders to implement these restoration scenarios. These monetary values indicate a welfare change due to the proposed policy scenarios, taking into consideration both the utility associated with the attributes and the exclusion of the value associated with the baseline payment.
The welfare value results shown in
Table 6 correspond to the mean amount of money that an individual landholder would be additionally compensated for implementing the restoration policy initiative as described for each scenario. Thus, the estimated annual compensating surplus that each household would receive is an average of CRC 100,086 (approximately USD 179.57) for scenario I, CRC 43,835 (approximately USD 78.65) for scenario II and CRC 23,777 (approximately USD 42.62) for scenario III. All of these values would be conditioned on compliance with the change in the additionality provision of ES.
4.5. Opportunity Costs and Nationwide PES Scheme in Costa Rica
To test the validity of these results, the opportunity costs of implementing restoration alternatives should be considered. The opportunity cost of an activity is theoretically defined as the highest profit forgone by not putting the land under an available alternative. In this case study, cattle ranching is not just the main land-use economic activity amongst surveyed households; moreover, it is hard to find alternative high-value crops given the low soil productivity and the other special biophysical conditions of the area. Empirical studies [
117,
118] report that about three-quarters of areas under PES schemes have soils that do not allow agricultural use. Alternative land uses such as urbanization and tourism are currently very far from being realistic and suitable options. Hence, the opportunity costs were calculated for cattle ranching and dual purpose (meat and dairy), with estimated average annual household benefits of about 175,876.14 and 338,925 CRC/ha/year, respectively. Although net present values should be calculated in order to properly consider these opportunity costs, since this study is only concerned with comparing programs, only the on-going year of payments is considered.
With regard to the national PES scheme in Costa Rica, there is a wide range of payments depending in the restoration category (
Table 7). For instance, for a reforestation plan with fast-growing species (e.g.,
Vochysia guatemalensis), the payment established for 2017 was CRC 643,107 per hectare for a 5-year period (an average of approximately CRC 128,621 per hectare and per year) by executive order R-541-2016-MINAE. The only plan capable of fully compensating the opportunity costs for the considered year is reforestation with native species.
5. Discussion
5.1. Targeting of Ecosystem Services as a Place-Based Approach
The first research question of this study was how to assess the extent to which cattle ranching landholders located in the Claro River sub-watershed would be willing to implement restoration projects within their properties through a hypothetical PES scheme. This question was raised based on the results obtained from primary data through a GIS-based spatial assessment, which demonstrated the presence of high levels of erosion susceptibility in the upper sub-watershed and a strong spatial correlation with cattle rangelands [
80,
81]. The selection of the erosion control (ERO) attribute along with two other ESs (water availability and biodiversity) in the CE model allowed us to elicit the respondents’ preferences for them in order. The ERO coefficient was shown to be positive and have the highest statistical significance, hence it shows that people prioritize restoration strategies focused on reversing land degradation and erosion risks. The WATER attribute estimate is also statistically significant (in contrast with the BIO attribute), with a magnitude very close to ERO. This means that landholders would prefer reforestation actions that would simultaneously enhance and ensure the delivery of water.
A common concern among researchers and environmental practitioners is the uncertain environmental effectiveness of nationwide PES schemes. The lack of a spatial targeting approach and the short-term nature of the programs are cited among the main concerns [
42,
58,
119]. Although the current Costa Rican PES scheme policy framework favors those applicants whose properties are located within a pre-established national biological corridor, the employment of national-scale secondary spatial data necessarily fails to address an effective place-based approach to target specific ESs.
In this case study, GIS-based erosion susceptibility data allows a spatially related allocation of payments. A micro-scale approach to the PES scheme would imply a double gain in terms of cost-effectiveness. First, a pre-determined ecosystem-based spatial targeting approach would allow the allocation of financial resources to areas more likely to enhance specific ESs. Primary SIG-based data and newly developed machine learning modeling techniques facilitate the spatial allocation of prioritized hotspots. Second, a micro-scale mapping assessment is essential for allocating specific restoration practices to tackle land degradation. In this sense, further research is strongly recommended to expand the GIS-based spatial assessment in the same location to quantify a wider range of ESs (e.g., water availability, biodiversity conservation, carbon sequestration).
5.2. Willingness to Restore Ecosystem Services under a PES Scheme
The first step in targeting the restoration of ecosystem services through a PES scheme relies on the active involvement of a large proportion of the potential providers. Following a place-based approach, in this case study, this commitment lies with the cattle farmers. The overall results of RPL and LC estimates suggest a strong preference among average landholders for the implementation of restoration initiatives, with the necessary support of a designed, constructed PES scheme. This result is consistent with the findings of previous case studies assessing the willingness to accept PES schemes in rural areas in Mexico and Nicaragua [
46,
47,
48,
50].
However, in this case study, about a third of the respondents clearly opted to maintain their current livestock production, without any land-use changes in their pastureland parcels. Most of the dual-purpose farmers preferred to maintain the status quo, although this choice does not necessarily assume an overall negative environmental opinion.
Two distinctive systems of livestock production were found. On the one hand, larger holdings, mainly located in the upper watershed, are involved in a cattle ranching-only scheme, based on selling and buying male bovines. The landholders’ families live in nearby urban settlements and usually generate extra off-farm income. Most of the holdings were reported to have less than one animal per hectare, so the revenue per hectare is low. Aside from the low productivity, the poor soil nutrient availability [
120] and climatic conditions [
121] also limit the implementation of alternative commodity crops. On the other hand, households under dual-purpose schemes are mainly characterized by small-scale family-based production of milk and cheese. The revenue per hectare is significantly higher than in the other cattle scheme thanks to the profitable sales of milk and artisanal cheese.
Therefore, the notable divergence in landholders’ stated choices, reflected in these two distinct systems of livestock production, can be explained by the differences in their land opportunity costs. This deductive conclusion is closely aligned to existing case studies in Mexico, Costa Rica, and other Central American countries [
46,
47,
48,
56,
63,
68]. Furthermore, it is possible to infer that the average low land opportunity costs and current low meat prices at local markets could also eventually explain the choice of some respondents for restoration alternatives.
To examine the extent to which landholders would potentially be eager to implement restoration actions on their properties under a PES scheme, individual marginal willingness to accept (WTA) estimates and implicit prices were calculated (see
Table 5). Observing the monetary value of the ASC, landholders on average would require 139,183 CRC/ha/year (approximately 249.72 USD/ha/year) as a baseline payment to enter the overall program. To determine internal validity, this amount can be contrasted with the estimated land opportunity costs for cattle ranching farmers (about 175,876.14 CRC/ha/year). Assuming that the monetary value of the ASC is normally distributed, it is possible to infer with reasonable confidence that the observed WTA estimates are within a realistic range.
According to our results, apart from the strategy of reforestation with native species, the amount of current fixed payments under the Costa Rican PES scheme seems to be insufficient to fully compensate the average income received by cattle ranching landholders. In this hypothetical scenario, transaction and operational costs are not considered, otherwise these would be necessarily assumed by landholders and, as a consequence, could nearly outweigh the whole compensation payment.
Therefore, landholders’ participation in a potential PES scheme could only be effective if an external intermediary institution were willing to assume at least the expected high direct operational costs of implementing reforestation projects. Transaction costs could be considerably reduced if economies of scale were gained by bundling individual contracts into a unique global contract. In this sense, given the fact that a discrete CE is basically designed as an individual decision-making approach, the capability of a community-based scheme could change the opinion of some initially reluctant landholders [
53]. Thus, future research should address the design and testing of alternative methodologies that could contribute to the search for collective decisions by potential beneficiaries, which would result in an efficient use of available public resources.
Despite the small sample size, we consider these results to be reasonably representative of the current state of cattle ranching landholders in mountain areas of southern Costa Rica. However, it would not be accurate to claim external validity outside this area. The preferences stated by the respondents must be contextualized in their own temporal and spatial scale. Taking into account the shortcomings of this case study, we demonstrate that even for a specific site with low land opportunity costs, it would be hard for the current national PSE scheme for reforestation to fulfil the preferences of landholders.
5.3. Evaluating a Layered Payment Scheme
The Costa Rican PES program includes the ability to enroll a PES scheme under a wide range of reforestation categories, allowing significant variation in PES levels (see
Table 7). This remarkable advantage implicitly captures latent layered payments that reflect differentiated ESs. In this sense, a reforestation strategy with native species may reflect a biodiversity-targeted approach. However, a baseline spatial dataset is essential to quantify the added net impact, in terms of enhanced provision of ES derived by the implementation of reforestation actions. This case study in particular provides GIS-based spatial hotspot data regarding erosion susceptibility modeling. Further spatial modeling research is required to provide a baseline dataset regarding water supply or water quality ES.
We consider that the main contribution of this case study consists of incorporating an ES additionality approach into a small-scale PES scheme. It is argued in [
122] that in order for a PES scheme to be efficient, the actions and derived services paid for are additional to the status quo, and according to [
60] this is a prerequisite for achieving effectiveness. In this sense, we investigated landholders’ willingness to accomplish reforestation actions, which imply land-use changes to their properties, in exchange for compensating payments conditioned on the enhancement of specific ESs. Hence, we designed a CE model by defining attributes related to the provision of erosion control, water availability, and biodiversity. The latter was not statistically significant in the econometric analysis and therefore was not included in further calculations.
Turning to the attributes valued the highest by the landholders, their estimated marginal WTA measures indicate the required additional payment for enhancing erosion control (2.54 USD/ha/year) and water availability (approximately 2.17 USD/ha/year). In order to construct a PES scheme with these findings, there are two alternative strategies: the traditional bundling, as used by the Costa Rican PES scheme, which consists of grouping both ESs together in a single package, or layering, by which payments are made separately for each ES within the same scheme framework.
We consider that the layering approach implies a further improvement step, considering the following: (1) With the support of baseline spatial datasets, trade-offs and overlapping effects between the additional enhancement provision of ES can be reduced by diverting the optimal resources to the required site-specific restoration actions [
61]. (2) This approach would favor the construction of “networked” or multi-level governance, which refers to the creation of ad hoc horizontal partnerships of institutions and social actors to manage the PES scheme, ideally based on bottom-up, collective decision-making [
61]. As an example, an erosion control scheme could be collectively funded by government institutions, regarding agriculture and livestock production or risk management, and social actors, such as local chambers of producers, in parallel with a scheme targeting local water companies by introducing a tariff to pay for water availability and quality. (3) Layering ecosystem services would benefit landholders by having additional payments conditioned on the enhanced delivery of ES.
6. Conclusions
This paper reports empirical research findings from a CE model integrated with support from GIS-based spatial data, to explore how landholders around the Claro River sub-watershed evaluate the option of restoring the region’s ES. The environmental spatial assessment and existing research evidence demonstrate high levels of erosion susceptibility in the upper sub-watershed, which leads to land degradation, with impacts on multiple ESs such as livestock yield, water availability, and biodiversity loss.
The overall CE results indicate that landholders under a cattle ranching regime are mostly willing to adopt drastic environmentally sound land-use changes if optimal incentive payments are provided through a PES scheme. CE also allows us to examine the presence and potential sources of behavioral heterogeneity across respondents and to estimate their willingness to accept (WTA) the implementation of restoration practices on their pasturelands. The larger the pasturelands and associated lower productivity, the more likely they will enroll in a PES scheme. In contrast, landholders under a dual-purpose farming scheme are clearly averse to changing their current small-scale mode of production.
Based on the results from this study, households explicitly recognize the benefits gained by first reducing the risks of soil erosion and land degradation, followed by securing water availability. The estimated levels of WTA these ESs capture the economic relevance that people attribute to securing present and future provision. However, in order to implement restoration projects, the estimated average individual WTA compensation levels for landholders, which are closely correlated to their opportunity costs, are strongly affected by the size of their pasturelands. These WTA estimates are a long way from fully offsetting the current payments offered by the Costa Rican PES program, even if a potential intermediary entity were to assume the expected high operational and transaction costs. Moreover, the lack of land tenure rights among most of the landholders would undermine access to the program.
Beyond these results, this case study assesses the potential benefits of a micro-scale layered PES scheme based on a spatial targeting approach and landholders’ willingness to accept payments to provide their most highly valued ecosystem services. This novel proposal could overcome the main shortcomings of the national PES scheme. However, the results must be carefully framed in the current temporal and spatial scales of the studied area and the small size of the surveyed population. Therefore, it is difficult to assume external validity for other sites in Costa Rica.
Some necessary policy implications should be addressed in order to undertake a micro-scale PES scheme. First, appropriate policy frameworks and institutional arrangements should be considered to draft flexible payment schemes closely aligned to a spatial targeting approach, in order to measure the additionality of differentiated ESs. Second, the development of “networked” or multi-level governance could improve access to alternative financial mechanisms, to complement the budget-fixed bounds of the nationwide PES program and play an intermediary role in assuming the expected high direct operational and transaction costs. Third, the implementation of secured land tenancy rights will be an inevitable and essential policy.