Selected Economic Determinants of Labor Profitability in Family Farms in Poland in Relation to Economic Size
Abstract
:1. Introduction
2. Review of the Literature
2.1. General Aspects of Income and Labor Profitability in Agriculture
2.2. Macroeconomic Determinants of Income in Agriculture
2.3. Technical Determinants of Income in Agriculture
2.4. Microeconomic Determinants of Income in Agriculture
3. Materials and Methods
3.1. Objective and Scope of Research
3.2. Data Source
3.3. Methods
- yit—a dependent variable,
- Xit—an explanatory variable (generally, a vector of explanatory variables),
- β—a vector with the dimension N of structural parameters,
- vit—total random error, consisting of a purely random part εit and an individual effect ui relating to a specific i-th panel unit (vit = εit + ui),
- i = 1, 2, …, N—subsequent objects,
- t = 1, 2, …, T—time units.
- ui—the time-constant individual effect for observations i,
- εit—pure random error.
- X—a matrix of explanatory variables,
- y—a vector of dependent variables,
- Ω—a reversible matrix of variance and covariance of the total random error.
- The goodness of a model with fixed effects compared to a classic model is verified using the Wald test. The verified null hypothesis assumes that all constants entered into the model are equal, regardless of the object and time. In this case, OLSM should be used.
- The F Test for Individual and/or Time Effects is used to assess the significance of differences between models, assuming the existence or the absence of group effects. The rejection of the null hypothesis assuming the lack of group effects indicates the need to estimate models with fixed effects.
- The Breusch–Pagan test is used to verify the assumption of the constancy of the variance of the random component. The rejection of the null hypothesis indicates the heteroscedasticity of the random component.
- The Hausman test is usually used when choosing between a fixed-effect model and a random-effect model. The null hypothesis is that the individual effects are independent of the explanatory variables, so both estimators are unconstrained. In this case, the estimator for the random effects model is considered more efficient. The opposite situation, on the other hand, means that the estimator for the fixed effects model is unconstrained, while the estimator for the random effects model is constrained. The situation thus indicates that a model with fixed effects is more appropriate.
3.4. Statistical Data
- Macroeconomic area:
- −
- X1—the index of price relations (“price gap”) constitutes the ratio of the price index of sold agricultural products to the price index of purchased goods and services. The price indices of sold agricultural products reflect changes in the average weighted procurement prices and the marketplace prices received by farmers. The price indices of purchased goods and services illustrate changes in the retail prices of goods and services purchased for the consumer, current agricultural production or investment purposes. Price indices have been calculated using the structure of the sold agricultural products as well as the structure of purchased goods and services from the year preceding the one under the survey as a weight system. The following weight systems have been applied for goods and services intended for: (1) consumption—the structure of the expenditure (excluding own consumption) of households of farmers resulting from the household budgets survey; (2) current agricultural production—the structure of purchases that were carried out by private farms; (3) investment—the structure of monetary expenditure based on data from national accounts concerning gross capital formation [103]. When this index is greater (less) than 100.0, it indicates that agricultural product (output) prices increase at a faster rate than farm input (commodity) prices, thereby having a positive (negative) effect on farm income. This was estimated for individual regions in Poland and synthetically informs about the economic situation in agriculture.
- −
- X2—unemployment—registered unemployment rate (for end of year) [%].
- −
- X3—average monthly gross wages and salaries. This indicator X2 and X3 allows for capturing the importance of the process of labor pull from agriculture.
- −
- X4—price indices of consumer goods and services (inflation).
- Technical area:
- −
- X5—agricultural production efficiency index, calculated as an output-to-input relation. The costs only represent the total specific costs of agricultural production. The output presents the total output of crops and crop products, livestock and livestock products and other output. The sale and use of (crop and livestock) products and livestock + change in the stock of products + change in the valuation of livestock—purchases of livestock + various non-exceptional products. This index shows the effectiveness of the production technology used and, to a large extent, shows the level of technological advancement of a farm.
- Microeconomic area:
- −
- X6—ratio of total assets to agricultural land [€/ha]—technical infrastructure of the land,
- −
- X7—ratio of total assets to the number of people working in the farm [€/AWU] (sum of own and hired labor inputs)—technical equipment for work,
- −
- X8—land-to-labor [ha/AWU] (AWU—sum of own and hired labor inputs) ratio. These three microeconomic indices (X6, X7, X8) make it possible to take into account the importance of the relationship of production factors in shaping the income situation of a farm. Indirectly, these relations determine the production technique used and reflect the prices of the factors of production.
- −
- X9—the debt ratio [%] is calculated as the ratio of total liabilities to total assets,
- −
- X10—subsidy ratio [%]—the ratio of the total amount of subsidies to the production value—it depends on the agricultural policy (institutional factor) but also on the farmer’s decision to use specific subsidies (e.g., for public goods provided). The subsidy rate was chosen instead of the simple sum of subsidies because, as indicated by Bojnec and Latruffe [87], it is less correlated with the farm size. In the conditions of the existence of the agricultural support system, it is necessary to take into account the institutional factor, the tangible elements of which are subsidies.
- −
4. Results
4.1. Description of Statistical Data
4.2. Results of Econometric Modeling
- classic linear panel model:
- linear fixed effects model:
- classic exponential panel model:
- exponential fixed effects model:
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A. Glossary of Used Terms
- AWU—Annual work unit. For more details, see: https://ec.europa.eu/eurostat/statistics-explained/index.php?title = Glossary:Annual_work_unit_(AWU) (accessed on 4 June 2022).
- Economic size classes—The farms are classified by size classes, the limits of which are set out as follows: ES1 (Very small)—standard output between EUR 2000 and EUR 8000; ES2 (Small)—standard output from EUR 8000 to EUR 25,000; ES3 (Medium-small)—standard output from EUR 25,000 to EUR 50,000; ES4 (Medium-large)—standard output from EUR 50,000 to EUR 100,000; ES5 (Large)—standard output from EUR 100,000 to EUR 500,000; ES6 (Very large)—standard output ≥500,000 EUR. The economic size of a holding is measured as the total standard output of the holding, expressed in EUR. For more details, see: https://eur-lex.europa.eu/legal-content/EN/ALL/?uri=CELEX%3A32008R1242 (accessed on 4 June 2022).
- FADN—Farm Accountancy Data Network
- Family farm income—Remuneration to fixed factors of production of the family (work, land and capital) and remuneration to the entrepreneur’s risk (loss/profit) in the accounting year. This income is calculated by adding Farm net value added (calculated: Farm net value added = Total output − Total intermediate consumption + Balance current subsidies and taxes − Depreciation) to Balance subsidies and Taxes on investment and subtracting Total external factors (Remuneration of inputs (work, land and capital) that are not the property of the holder = wages, rent and interest paid). For more details, see: https://agridata.ec.europa.eu/extensions/FADNPublicDatabase/description.html (accessed on 4 June 2022).
- FWU—Family Work Unit—Refers generally to unpaid labor expressed in FWU = Family work unit = Family AWU.
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Variable | ES1 | ES2 | ES3 | ES4 | ES5 |
---|---|---|---|---|---|
y1—profitability of labor | |||||
1841.32 | 3786.94 | 8240.06 | 14,758.31 | 32,718.23 | |
Vs (%) | 37.84 | 18.07 | 18.14 | 16.30 | 19.31 |
As | 0.07 | 0.05 | 0.18 | 0.04 | 0.83 |
X5—agricultural production efficiency index | |||||
3.00 | 2.70 | 2.58 | 2.44 | 2.16 | |
Vs (%) | 12.15 | 10.35 | 10.25 | 8.13 | 7.12 |
As | 0.20 | 0.01 | 0.03 | 0.01 | 0.56 |
X6—technical infrastructure of the land | |||||
3312.61 | 3124.85 | 3343.23 | 3589.37 | 3944.14 | |
Vs (%) | 27.83 | 22.13 | 24.74 | 27.79 | 46.24 |
As | 0.28 | −0.14 | −0.21 | −0.32 | 0.52 |
X7—technical equipment for work | |||||
21,178.79 | 27,494.80 | 43,624.68 | 63,623.66 | 78,993.31 | |
Vs (%) | 18.63 | 12.21 | 9.97 | 13.69 | 18.41 |
As | 0.24 | 0.36 | 0.02 | −0.61 | 0.19 |
X8—land-to-labor | |||||
6.71 | 9.22 | 13.88 | 19.39 | 25.59 | |
Vs (%) | 21.97 | 23.72 | 26.57 | 34.29 | 55.36 |
As | −0.12 | 0.48 | 0.77 | 0.79 | 0.92 |
X9—debt ratio | |||||
1.63 | 3.30 | 6.72 | 10.99 | 17.56 | |
Vs (%) | 115.80 | 57.44 | 48.62 | 43.04 | 37.23 |
As | 2.21 | 0.96 | 0.82 | 0.79 | 0.88 |
X10—subsidy ratio | |||||
36.41 | 28.28 | 21.30 | 16.72 | 11.13 | |
Vs (%) | 38.27 | 35.84 | 37.99 | 40.00 | 45.75 |
As | 0.53 | 0.61 | 0.72 | 0.65 | 0.72 |
X11—investment effort | |||||
7.44 | 23.97 | 30.29 | 38.32 | 41.82 | |
Vs (%) | 322.25 | 129.21 | 29.35 | 28.68 | 43.03 |
As | 3.70 | 7.56 | 0.35 | 0.40 | 2.81 |
Variables | Coefficient | Std. Error | t-Ratio | p-Value |
---|---|---|---|---|
const | −6.907680 | 3.645 | −1.895 | 0.064 * |
X1 | −0.225046 | 0.778 | −0.289 | 0.773 |
X2 | −0.011786 | 0.022 | −0.525 | 0.602 |
X3 | −0.000441 | 0.000 | −2.673 | 0.010 *** |
X4 | 0.108541 | 0.030 | 3.671 | 0.001 *** |
X5 | 1.001393 | 0.208 | 4.820 | 0.000 *** |
X6 | 0.000188 | 0.001 | 0.315 | 0.754 |
X7 | −0.000021 | 0.000 | −0.236 | 0.814 |
X8 | 0.130750 | 0.247 | 0.530 | 0.598 |
X9 | 0.114782 | 0.053 | 2.146 | 0.036 ** |
X10 | 0.026099 | 0.008 | 3.164 | 0.003 *** |
X11 | −0.005063 | 0.003 | −1.818 | 0.075 * |
R2 | 0.4885 | - | ||
F-Statistic | 4.6019 | 0.0001 | ||
Wald test () | 50.6208 | 0.0000 | ||
F Test for Individual and/or Time Effects | 7.9794 | 0.0002 | ||
Breusch−Pagan Test | 12.2153 | 0.3477 |
Variables | Coefficient | Std. Error | t-Ratio | p-Value |
---|---|---|---|---|
const | −19,467.149 | 5148.852 | −3.781 | 0.000 *** |
X1 | 3271.970 | 1416.063 | 2.311 | 0.025 ** |
X2 | −43.748 | 38.163 | −1.146 | 0.257 |
X3 | −0.431 | 0.265 | −1.624 | 0.110 |
X4 | 162.427 | 43.041 | 3.774 | 0.000 *** |
X5 | 759.623 | 523.467 | 1.451 | 0.152 |
X6 | 0.166 | 0.661 | 0.251 | 0.803 |
X7 | 0.055 | 0.087 | 0.630 | 0.531 |
X8 | 215.083 | 226.599 | 0.949 | 0.347 |
X9 | −56.903 | 96.801 | −0.588 | 0.559 |
X10 | −11.080 | 17.814 | −0.622 | 0.536 |
X11 | −4.825 | 2.295 | −2.102 | 0.040 ** |
R2 | 0.4801 | − | ||
F-Statistic | 4.7014 | 0.0000 | ||
Wald test () | 51.7154 | 0.0000 | ||
F Test for Individual and/or Time Effects | 0.6043 | 0.6151 | ||
Breusch−Pagan Test | 20.5465 | 0.0584 |
Variables | Coefficient | Std. Error | t-Ratio | p-Value |
---|---|---|---|---|
const | 3.375360 | 1.143 | 2.952 | 0.005 *** |
X1 | 0.264986 | 0.285 | 0.930 | 0.357 |
X2 | −0.003672 | 0.010 | −0.371 | 0.712 |
X3 | −0.000042 | 0.000 | −0.725 | 0.472 |
X4 | 0.034056 | 0.010 | 3.471 | 0.001 *** |
X5 | 0.626949 | 0.155 | 4.049 | 0.000 *** |
X6 | −0.000172 | 0.000 | −1.339 | 0.186 |
X7 | 0.000045 | 0.000 | 3.793 | 0.000 *** |
X8 | −0.054220 | 0.037 | −1.455 | 0.152 |
X9 | −0.001960 | 0.012 | −0.161 | 0.873 |
X10 | −0.008868 | 0.006 | −1.474 | 0.146 |
X11 | 0.001324 | 0.002 | 0.555 | 0.581 |
R2 | 0.7385 | - | ||
F-Statistic | 13.6087 | 0.0000 | ||
Wald test () | 149.6955 | 0.0000 | ||
F Test for Individual and/or Time Effects | 7.3285 | 0.0003 | ||
Breusch–Pagan Test | 20.0631 | 0.0545 |
Variables | Coefficient | Std. Error | t-Ratio | p-Value |
---|---|---|---|---|
const | −74,505.200 | 13,556.100 | −5.496 | 0.000 *** |
X1 | 3972.274 | 3240.871 | 1.226 | 0.226 |
X2 | −37.101 | 103.915 | −0.357 | 0.722 |
X3 | −0.780 | 0.625 | −1.249 | 0.217 |
X4 | 525.521 | 114.626 | 4.585 | 0.000 *** |
X5 | 8516.222 | 1813.608 | 4.696 | 0.000 *** |
X6 | −0.955 | 1.093 | −0.874 | 0.386 |
X7 | 0.283 | 0.064 | 4.432 | 0.000 *** |
X8 | 129.099 | 185.932 | 0.694 | 0.491 |
X9 | 22.305 | 106.605 | 0.209 | 0.835 |
X10 | −189.728 | 94.864 | −2.000 | 0.051 * |
X11 | −3.593 | 22.392 | −0.160 | 0.873 |
R2 | 0.7234 | - | ||
F-Statistic | 12.6030 | 0.0000 | ||
Wald test () | 138.6330 | 0.0000 | ||
F Test for Individual and/or Time Effects | 6.3502 | 0.0009 | ||
Breusch−Pagan Test | 17.5234 | 0.0933 |
Variables | Coefficient | Std. Error | t-Ratio | p-Value |
---|---|---|---|---|
const | −115,589.000 | 40,680.600 | −2.841 | 0.006 *** |
X1 | 14,610.152 | 9034.753 | 1.617 | 0.112 |
X2 | −346.381 | 288.828 | −1.199 | 0.236 |
X3 | −0.466 | 2.008 | −0.232 | 0.817 |
X4 | 1484.159 | 355.157 | 4.179 | 0.000 *** |
X5 | 6934.137 | 4669.461 | 1.485 | 0.143 |
X6 | 0.483 | 1.257 | 0.384 | 0.702 |
X7 | −0.026 | 0.103 | −0.247 | 0.806 |
X8 | −276.349 | 314.543 | −0.879 | 0.384 |
X9 | −599.909 | 234.243 | −2.561 | 0.013 ** |
X10 | −889.734 | 296.754 | −2.998 | 0.004 *** |
X11 | 16.690 | 36.076 | 0.463 | 0.646 |
R2 | 0.4813 | - | ||
F-Statistic | 4.4716 | 0.0001 | ||
Wald test () | 49.1875 | 0.0000 | ||
F Test for Individual and/or Time Effects | 5.8291 | 0.0016 | ||
Breusch−Pagan Test | 12.8345 | 0.3043 |
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Kusz, B.; Kusz, D.; Bąk, I.; Oesterreich, M.; Wicki, L.; Zimon, G. Selected Economic Determinants of Labor Profitability in Family Farms in Poland in Relation to Economic Size. Sustainability 2022, 14, 13819. https://doi.org/10.3390/su142113819
Kusz B, Kusz D, Bąk I, Oesterreich M, Wicki L, Zimon G. Selected Economic Determinants of Labor Profitability in Family Farms in Poland in Relation to Economic Size. Sustainability. 2022; 14(21):13819. https://doi.org/10.3390/su142113819
Chicago/Turabian StyleKusz, Bożena, Dariusz Kusz, Iwona Bąk, Maciej Oesterreich, Ludwik Wicki, and Grzegorz Zimon. 2022. "Selected Economic Determinants of Labor Profitability in Family Farms in Poland in Relation to Economic Size" Sustainability 14, no. 21: 13819. https://doi.org/10.3390/su142113819
APA StyleKusz, B., Kusz, D., Bąk, I., Oesterreich, M., Wicki, L., & Zimon, G. (2022). Selected Economic Determinants of Labor Profitability in Family Farms in Poland in Relation to Economic Size. Sustainability, 14(21), 13819. https://doi.org/10.3390/su142113819