1. Introduction
One of the main results of the agency theory is the trade-off between incentives and insurance. Lower agent’s risk aversion allows the principal to provide more incentives by making the payment of the agent more related to output, while higher uncertainty increases the gains from insuring the agent and reduces the pay-for-performance sensitivity (e.g., Holmstrom and Milgrom [
1] ). However, the empirical works testing the link between uncertainty and incentives have found mixing results (e.g., Rao and Hanumantha [
2], Allen and Lueck [
3], Aggarwal and Samwick [
4], Core and Guay [
5], and Wulf [
6]). In many cases, the empirical findings are even in contradiction with the standard predictions of the theory as they document a positive (rather than negative) correlation between observed measures of uncertainty and the provision of incentives (see Prendergast [
7] for an extensive discussion on this point).
Some recent contributions on the matching literature (e.g., Wright [
8], Legros and Newman [
9], Serfes [
10,
11], and Li and Ueda [
12]) has attempted to offer a theoretical justification of the above cited results. The explanation provided has been based on the endogenous matching between principals and agents by introducing the heterogeneity on managers’ degree of risk aversion (Wright [
8]), on the assortative matching between risk-averse agents and riskier principals (Serfes [
10]), or on the matching between agents and firms that differ, respectively, for the level of productivity and riskiness (Li and Ueda [
12]).
Differently from the logic developed in the matching models, in this paper, we propose an alternative and simpler explanation of the relationship between risk and incentives based on the endogeneity of the technology adopted by the principal. In particular, we show that the traditional relationship between agent’s risk aversion and optimal incentive may be absent or reversed when the technology is endogenous and projects with higher efficiency are also riskier.
To describe the mechanisms at work in our theory, we propose a modified version of the Holmstrom and Milgrom’s [
1] framework, where the principal can choose among a continuous set of projects where those with higher efficiency are also characterized by higher riskiness. While the employment of Holmstrom and Milgrom’s framework implies some simplifying assumptions (such as constant absolute risk aversion utility function, quadratic costs and normally distributed shocks), it allows us to describe the mechanisms at work in a clear and simple model that generates closed-form solutions.
We obtain that lower agent’s risk aversion unambiguously leads to higher incentives only when the technology function linking risk and efficiency is elastic, while the risk aversion–incentive relationship can be positive when this function is rigid. This is because a lower risk aversion of the agent makes it optimal for the principal the adoption of a riskier and a more efficient technology. While the higher efficiency of the new technology (as well as the lower agent’s risk aversion) allows the principal to give more incentives to the agent, its higher riskiness makes the provision of incentives more costly which works in the direction of reducing the optimal degree of the pay-for-performance sensitivity.
In other words, whereas less risk averse agents would normally induce the principal to provide more incentives, they also lead her to choose more productive and riskier technologies. The higher efficiency of the new technology also pushes towards an increase of incentives but the higher riskiness works in the opposite direction making it optimal their reduction. The relative strength of this latter effect is related to the elasticity of technology function linking efficiency and riskiness, and it is higher the lower such elasticity. When this situation occurs, the relationship between the agent’s degree of risk aversion and incentives becomes positive.
As we anticipated above, our work is related to the matching literature that addresses the issue of the link between uncertainty and incentives. In particular, by introducing competition for heterogeneous managers, who differ in their degrees of risk aversion, Wright [
8] proves that a negative or positive relationship between agents’ risk and incentives is possible and depends on the relative risk aversion of the managers and the riskiness of the environments. Serfes [
10] shows that, whereas under efficient
positive assortative matching (in which higher risk-averse agents are optimally matched with riskier principals) the traditional trade-off between risk and incentives holds, under efficient
negative assortative matching (lower risk-averse agents are matched with riskier principals) this trade-off can fail to hold, in particular when matching curves are very steep. Li and Ueda [
12] show, instead, that, if the agents differ only in their productivity, safer firms will offer high-powered incentives schemes, in this way capturing the higher productive workers at the endogenous matching. Legros and Newman [
9] look in general at the sufficient conditions for monotone matching when the utility between partners is not fully transferable. In an application to principal–agent model, they show that when the agents’ risk aversion does not decline too quickly, the agents with lower risk aversion (or higher wealth) are matched to principals with safer projects.
1 It is worth noting that, differently from matching models, where both principals and agents can select endogenously their partners, in our model the principal only decides the technology to adopt (with its peculiar riskiness) and the bonus paid to the agent to incentivize his effort. Here, neither the principal nor the agent is allowed to select its preferred partner.
The paper is organized as follows. In
Section 2, we describe the framework, and
Section 3 provides the solution of the model.
Section 4 presents the comparative statics analysis of the effect of a reduction of the agent’s risk aversion on incentives.
Section 5 provides a discussion on our framework and on a modified version of it.
Section 6 concludes.
2. The Framework
We consider a moral hazard model as in Holmstrom and Milgrom [
1]. The principal decides the technology and is risk neutral. The agent is risk averse and has a constant absolute risk aversion (CARA) utility function
u with a coefficient of absolute risk aversion equal to
r, i.e.,
where
x is the agent’s payoff. Total output is equal to
where
e is the agent’s action (e.g., effort) and
is an (unobservable) random variable normally distributed with zero mean and variance
. The technology is characterized by quadratic costs, so that the agent’s cost of action is
where
k is a constant representing the efficiency of the technology employed. Better technologies are characterized by a lower cost parameter
k and vice-versa. The agent’s reservation utility is equal to
.
We here modify the Holmstrom and Milgrom’s framework by assuming the existence of a given set of technologies (or projects) with different levels of efficiency and riskiness among which the principal can choose. In particular, we assume a trade-off between efficiency and riskiness so that technologies with a higher volatility
also have a lower marginal cost of effort, i.e.,
where
for all
.
2 For simplicity, the function
is assumed to be a continuous and differentiable in
. As we shall see, the following conditions on the technology function ensure that an interior solution for the optimal technology always exists: (i)
large enough, (ii)
, and (iii)
.
The timing of events in our framework is the following: (1) the principal decides the optimal technology and the agent’s payment scheme; and (2) the agent optimally chooses the action.
In the next sections, we determine the choices of the principal and of the agent, and analyze the effects of a variation of the agents’ risk aversion on the optimal payment scheme of the agent.
3. The Equilibrium
We solve the problem by determining the optimal payment scheme and the agent’s action for a given technology.
3 Then, we determine the optimal technology choice of the principal.
Holmstrom and Milgrom [
1] show that a linear payment is optimal in the above framework, so that the agent’s payment can be written as
, where
and
are constants optimally chosen by the principal that have to be determined. Taking into account Equations (
1)–(
3) and the distribution of the shock, the agent’s expected utility is
and therefore his maximization problem can be written as
The first order condition of this problem is
Substituting this latter condition into Equation (
5), and then setting the expression (representing the agent’s certainty equivalent) equal to
gives
4Hence, the principal’s maximization problem becomes
which gives the following well-known second best solution for the agent’s action
5Using the fact that
, it follows that the optimal share of output paid to the agent is
and the optimal fixed payment is
Let now
denote the variance of the optimal project. This is the solution of the following maximization problem of the principal
subject to the technological constraint in Equation (
4).
6The first order condition of this problem is
and, therefore, the variance
of the optimal project is implicitly defined by the following equation:
where
and
.
7 The effort cost parameter for the optimal technology follows from Equation (
4) and it is
.
As the existence of a unique global maximum
will be useful for the comparative static analysis, we restrict the attention to the set of functions
representing the technological relation between efficiency and riskiness that ensures this outcome. A unique maximum requires that the profit function
in Equation (
10) is increasing for
and decreasing for
, that is
if
. Note that the sign of
is the same as the sign of the function
in (
12). Hence, from
, it follows that
monotonically decreasing in
guarantees that
when
and
when
; this in turn implies that
if
with
as the unique maximum. In other words, a unique maximum requires that
The first component of Equation (
13) is positive (as
), the second is negative while the third one has the opposite sign of
. Therefore, while
can generally be concave or convex, a sufficient condition for Equation (
13) to hold is that
is sufficiently convex, i.e., that
is positive and large enough.
The existence of an interior solution
to the equation
in Equation (
12) is guaranteed when
and
given that
is monotonically decreasing in
. As the second component of Equation (
12) is nonnegative, a sufficient condition that guarantees that
is that
, i.e., that
, so that the sum of the first and third component of
is strictly positive.
8 From
and
follows that the first two components of Equation (
12) tend to zero as
reaches the upper bound
; hence,
.
The following proposition summarizes these results.
Proposition 1. The principal chooses the technology with the variance implicitly defined by Equation (12) and with the level of efficiency defined in Equation (4). The agent optimally chooses the action reported in Equation (7) and the coefficients of the linear payment scheme and are defined by Equations (8) and (9) with and respectively. 4. Agent’s Risk Aversion and the Provision of Incentives
In this section, we analyze how a variation in the agent’s risk aversion affects the provision of incentives when, as, in our framework, such a variation also induces a change in the technology adopted. We then provide the conditions for a positive relationship between agent’s risk aversion and incentives and finally illustrate our analysis in the case where the technology function has a specific functional form.
4.1. The Effects of a Change of the Agent’s Risk Aversion on Incentives
We first note that a reduction in the agent’s risk aversion increases the riskiness
as well as the efficiency (
goes down) of the technology chosen by the principal. Indeed, by applying the implicit function theorem to Equation (
12), we obtain that
as the denominator is negative from the second order condition of maximization problem in Equation (
10) and the numerator is also negative since the first order condition in Equation (
12) implies that
.
Now, we show that, while the reduction of the agent’s risk aversion induces the principal to provide more incentives by increasing the agent’s payment related to the output for any
given technology adopted (it is immediate from Equation (
8) that
is decreasing in
r), this result may no longer hold if the lower risk aversion of the agent leads the principal to change the technology employed (i.e., its efficiency and riskiness). In this case, the characteristics of the new technology may affects the optimal provision of incentives in ways that counterbalance the former (standard) effect.
The total effect of a reduction of the agent’s risk aversion on the optimal share
of output paid to the agent is obtained by total differentiation of Equation (
8), which gives
Let us now analyze each of these effects generated by a decrease in agent’s risk aversion on
in detail. The first component in Equation (
15) represents the (standard)
direct effect of a reduction of
r on
, namely the effect on
if the same technology is employed. This component is equal to
and it is always negative as a lower agent’s risk aversion makes it optimal for the principal to give more incentives and less insurance to the agent, which requires increasing the payment related to output (i.e.,
).
The other two components in Equation (
15) represent the
indirect effect of the reduction of
r on
, i.e., the effect caused by a change in the technology employed (following by the reduction of the agent’s risk aversion) on the incentives provided by the principal to the agent. From Equation (
14) we know that the new technology is characterized by a higher riskiness and a higher efficiency which generate two opposing effects on
.
The higher riskiness
of the new project adopted when the agent’s risk aversion decreases makes it optimal the provision of more insurance and less incentives to the agent as
In other words, a reduction of
r increases the riskiness of the optimal technology (
, see Equation (
14)) and this increases the payment
related to output (see Equation (
17)). We call this the
riskiness effect and it has the opposite sign of the (standard) direct effect generated by the reduction of the agent’s risk aversion
r.
However, the new technology is also characterized by a higher efficiency (i.e., a lower cost of effort
k), which makes it optimal an increase of incentives as
Specifically, a reduction of
r leads to the adoption of a project which has a lower
k (together with a higher
), and this increases the payment
related to output. We call this the
efficiency effect and it has the same sign of the direct effect caused by a lower
r.
9Hence, the net indirect effect due to the adoption of a riskier and more efficient technology may in general lead to an increase or a decrease of incentives. In particular, the following three situations may arise.
(i) When the efficiency effect dominates the riskiness effect, the net indirect effect has the same sign of the (standard) direct effect. Therefore, a lower agent’s risk aversion increases the incentives that the principal provides to the agent; in other words, increases as r lowers because the additional indirect effect generated by the change of the technology employed on the payment scheme reinforces the standard effect.
(ii) When instead the riskiness effect prevails over the efficiency effect, the net indirect effect due to the change of the technology adopted (generated by a less risk averse agent) implies that the principal may find it optimal to reduce the incentives provided to the agent. As in this case the indirect effect has the opposite sign of the (standard) direct effect, the final effect on the compensation scheme depends on which of these two effects prevails. If the indirect effect is not strong enough to more than compensate the (standard) direct effect, then the final effect is the same of that one described at the previous Point (i).
(iii) If the indirect effect more than compensate the (standard) direct effect, then the principal will find it optimal to decrease the incentives provided to the agent by reducing the share of the agent’s payment related to the output as r goes down.
This latter case is the most interesting for our theory as it represents the situation where the change of technology adopted induces a variation in the sign of the relationship (relative to the standard theory) between the agent’s risk aversion and the degree of incentives provided by the principal to the agent. As a condition for observing a positive (rather than a negative) relationship between risk aversion and incentives is the dominance of the riskiness effect on the efficiency effect, so that the indirect effect has the opposite sign of the standard direct effect, we now try to understand under what conditions this situation is more likely.
4.2. Agent’s Risk Aversion and Incentives: The Conditions for a Positive Link
Let us first analyze the case where the net indirect effect has the same sign of the direct effect, so that
in (
15) is always negative and, therefore, a lower agent’s risk aversion leads to more incentives (this is the case described above at Point (i)).
From the last two components in the right-hand side of Equation (
15), we know that the indirect effect is negative if
As from Equation (
14),
is always negative, it is immediate to see that the above inequality requires that
where
. Using Equations (
17) and (
18), we obtain that the inequality in Equation (
19) is satisfied when the following condition holds.
Condition 1. The elasticity of the technology function with respect to the variance is weakly greater than 1, i.e., To better understand the intuition behind the result leading to Condition 1, let us again recall that a necessary condition for observing a positive (rather than a negative) relationship between risk aversion and incentives is the dominance of the riskiness effect on the efficiency effect, so that the indirect effect goes in the opposite direction of the (standard) direct effect and may eventually prevail over the latter. Otherwise, the usual relationship between risk aversion and incentives described in Case (i) holds.
The reduction of the agent’s risk aversion induces the principal to adopt a more efficient and riskier technology. The higher riskiness of the technology makes it optimal for the principal to reduce the incentives (and increase the insurance) to the agent by making the payment more related to output (this riskiness effect leads to a reduction of ). The fact that the technology is more efficient induces instead the principal to increase the incentives to the agent by making his payment more related to output (this efficiency effect increases ). Now, if the function is elastic, then, for any given increase in the riskiness of the new technology employed (and therefore for any given size of the riskiness effect), the increase in the efficiency of the selected technology (going in the standard direction) will be large. In turn, this will make more likely that the efficiency effect dominates the riskiness effect. Condition 1 simply states that the required threshold on elasticity for this phenomenon to take place is 1. When, conversely, the function is rigid (namely for ) and Condition 1 does not hold, an increase in the riskiness of the adopted technology implies that the efficiency effect may dominate the riskiness effect.
In other words, the elasticity of the technology function positively affects the size of the efficiency effect relative to the riskiness effect. Given that the latter effect needs to prevail over the former to reverse the standard relationship between agent’s risk aversion and incentives, the elasticity needs to be relatively small (i.e., Condition 1 does not have to hold) for this to happen.
It is also important to emphasize that
does not guarantee a positive relationship between the agent’s degree of risk aversion and incentives as the (standard) direct effect could more than compensate the (net) indirect effect, i.e., the situation described at Point (ii) above could apply. However, when this does not happen and the riskiness effect is stronger than the sum of the direct effect and the efficiency effect (i.e., Case (iii) applies), a higher agent’s risk aversion may lead to a reduction of the incentive provided by the principal (i.e., to a reduction of
). This is the case when
in (
15) is positive. By substituting Equations (
14), (
16), (
17), and (
18) into Equation (
15) and rearranging terms, we obtain that
occurs when the elasticity
of the technology function is lower than a given threshold
, i.e., if the following condition holds.
10Condition 2. The elasticity of the technology function with respect to the variance is smaller than a threshold , i.e., The following proposition summarizes these results.
Proposition 2. A reduction in the agent’s risk aversion r generates two effects on the optimal share of output paid to the agent. The direct effect always increases , while the indirect effect due to the higher riskiness and efficiency of the new technology adopted can lead to an increase or a decrease of . The following results may be obtained.
- (i)
When Condition 1 is satisfied, both the direct and indirect effects have the same sign and a lower agent’s risk aversion r unambiguously increase (i.e., as in the standard principal–agent model.
- (ii)
When Condition 1 does not hold, the total effect of r on can either be negative or positive, depending on the magnitude of the direct and of the indirect effects.
- (iii)
When Condition 2 holds, the indirect effect have the opposite sign of the direct effect and larger size; therefore, a lower agent’s risk aversion r unambiguously decreases (i.e., , which is an opposite result to the one usually obtained in the standard principal–agent model.
To further clarify this point in more detail, we consider below a specific functional form for the relationship between the cost parameter k of the agent and the risk of the project expressed by .
4.3. An Example
We assume that the function representing the technological set
has a specific functional form characterized by constant elasticity, i.e.,
, with
and
.
11 This means that
k is finite and positive for all
,
, and
.
The first order condition in Equation (
12) of the principal’s maximization problem can be rewritten as
which implies that the variance of the optimal technology is equal to
As we showed for the general case, the function
has the same sign of
. From Equation (
20), we obtain that
which is negative for all
. The parameter
implies that
and, therefore, that the function
is decreasing at
. As there is no other point at which
(from Equation (
21), it is immediate that
is unique), it follows that
for all
and
for all
>
. This in turn implies that
if
and therefore that
is the unique maximum.
From
, it follows that Condition 1 does not hold (as
) and the indirect effect is positive, i.e., the change of technology induced by the lower agent’s risk aversion
r leads to a reduction of
(the riskiness effect dominates the efficiency effect). This indirect effect opposes to the direct effect which instead pushes for an increase in
. The total effect of a reduction of
r on
can be computed by substituting Equations (
16)–(
18) and
(which is obtained from Equation (
21)) into Equation (
15). This leads to
which means that, in this special case, the direct and indirect effect of a change in
r on
exactly offset each other and therefore that a reduction in the agent’s risk aversion leaves the fraction of output paid to the agent unchanged.
From Equation (
20), we also obtain that
which can be either positive or negative for
(e.g., if
, the expression is positive for
and negative for
) and, therefore, is in general compatible with both positive and negative assortative matchings, as discussed in Footnote 9.
5. Extensions and Discussion
In this section, we address two issues. We first describe the role played by asymmetric information in explaining the choice of the principal and then we show that our results are robust to changes of the baseline setting by analyzing a framework where the higher return of riskier projects does not imply a reduction of the marginal cost of effort.
It is worth emphasizing that, in absence of asymmetric information between the principal and the agent, each project has a net return for the principal
because the agent’s payment is equal to his certainty equivalent plus the cost of effort, i.e., it is equal to
; the principal optimally fully insures the agent when there is no moral hazard. As more efficient technologies have a lower marginal cost of effort
k, this implies a higher expected value of the net return of the project as this is given by
. At the same time, more efficient technologies are also riskier as projects with a lower marginal cost of effort
k are associated to a higher variance
of the shock; this implies a higher variance of the project’s net return as this is equal to the variance of the shock, i.e.,
. However, in this case, our problem has a trivial solution: the risk neutral principal adopts the most efficient technology, i.e., the one with the lowest marginal cost of effort
and the highest variance
. Indeed, one can easily verify that the optimal agent’s effort is
and therefore the optimal net return is equal to
; as the principal is risk neutral, she finds it optimal choosing the most efficient technology with
. This result comes from the fact that, in absence of asymmetric information, the agent’s risk premium is equal to zero (because the principal optimally bears all risk and provides full insurance to the agent) and therefore the technology with the highest expected return is the most efficient one. When there is asymmetric information between the principal and the agent, the net return of the project is represented by the expected net profit
of the (risk-neutral) principal reported in Equation (
10). From the maximization problem in Equation (
10), we know that
is increasing for
and decreasing for
. In this setting, the agent’s risk premium becomes positive because the provision of incentives requires that the principal does not fully insure the agents who has to bear some risk. Such a risk premium is affected not only by the agent’s degree of risk aversion but also by the technology employed and by the optimal incentive scheme, which in turn depends on the characteristics (in terms of efficiency and riskiness) of the technology. It is the variation of this risk premium with the project implemented that contributes to break the monotonic positive relationship between
and
that characterizes the setting without asymmetric information and that leads to an interior solution for the optimal project (even if the principal, who chooses the technology, is risk neutral).
We now compare our model results with those obtained in a similar setting where the projects among which the principal can choose yield a return
, with the shock
, and with
, namely higher error means are associated with higher variances. For simplicity,
k is now given and independent on
so that the agent’s cost is not linked to the variance of the technology employed, i.e.,
is still given by Equation (
3).
12It is easy to verify that, similar to the baseline model, the optimal share of output paid to the agent
is still given by Equation (
8) and that the net principal’s profit is the same as the one reported in Equation (
10) with the addition of the mean
of the shock and the fact that
k is fixed rather than being a function of
, i.e., the principal’s maximization problem now reads
Thus, the optimal project is the one with the variance
that satisfies the following first order condition
Since
, Equation (
23) will normally lead to a unique maximum for the choice of the project. The solution of the condition in Equation (
23) will be interior when the second order condition of the maximization problem is satisfied, i.e., when
which generally holds when
is negative and large enough.
From the first order condition in Equation (
23), one can easily derive the following relationship between the equilibrium project variance and the degree of agent’s risk aversion:
The second order condition in Equation (
24) implies that the denominator of Equation (
25) is negative and, therefore, the sign of
is the same as the sign of the term
. This means that
if
, i.e., a reduction of the agent’s risk aversion leads the principal to select a riskier project when the levels of risk aversion, project variance and marginal cost of effort are relatively low.
Since now
k is unrelated to the project’s variance (
), from Equation (
15), we observe that the
indirect efficiency effect (represented by the third component) is absent. This implies that, in this new framework, if
so that
, the
indirect effect of
r on
coincides with the
indirect riskiness effect (which is the key new effect at work in the baseline framework).
13 The absence of the indirect efficiency effect in this setting only works in the direction of making our conclusions more robust as such effect only reinforces the standard direct effect.
Again, if the indirect effect (represented by the second component in Equation (
15)) more than compensate the (standard) direct effect (given by the first term in Equation (
15)), the principal optimally chooses a riskier project and decreases the incentives provided to the agent by reducing the share
of the agent’s payment related to the output when the agent’s risk aversion
r declines (as described in Point (iii) at the end of
Section 4).
In other words, the analysis just presented shows that the indirect riskiness effect highlighted in the baseline framework (and that is at the heart of the contribution of this work) is present and could dominate even more frequently in a setting where the project’s riskiness is related to the error mean of the technology employed rather than to the marginal cost of effort.
6. Conclusions
We have shown that, in a principal–agent model with endogenous technology choice, the usual negative trade-off existing between the agent’s risk aversion and optimal incentives does not necessarily hold and can, in some cases, be reversed. We have shown this result by using a modified version of Holmstrom and Milgrom’s [
1] framework where the principal can choose among different technologies where those with higher efficiency also have higher riskiness.
Our analysis highlights how, in such a framework, the reduction of the agent’s risk aversion induces the adoption of a riskier technology that, in some cases, can revert the usual effects and lead to a reduction of the level of incentives provided to the agent. We have shown that such a result is more likely to occur when the link between the efficiency of the technology and its riskiness is relatively weak. Moreover, we have presented a special case where the increase in the riskiness of the technology is such that its effect on incentives counterbalances all the other effects leading to a neutrality between agent’s risk aversion and the degree of incentives provided.
While this work has highlighted a new channel affecting the incentive scheme in principal–agent relationships, we think that additional work is needed to properly disentangle the relationship between the choice of technology (e.g., its degree of innovation and riskiness) and the amount of incentives provided by the firm. However, we leave this task to future research.