The authors provide the first theoretical analysis of a one-sector, discrete-time, Schumpeterian model of growth in a regional economy in which consumers are risk neutral, there is no population growth, monopolistic entrepreneurs produce intermediate goods, and a single consumption good is produced competitively. The authors' analysis generates several new results. In the deterministic model, R&D in time t surely leads to an innovation in time t + 1. In this setting, the authors show that relative to the balanced growth path (BGP) equilibrium, the social planner always allocates more labor to R&D and hence achieves a larger size of innovation and a higher growth rate. Next, in the stochastic model, R&D in time t probabilistically leads to an innovation in time t + 1. In this setting, the authors first define the equilibrium and the steady state BGP allocations. Second, the authors generalize the notion of the steady state and determine the number of unemployed workers. Third, the authors show that the regional economy experiences bursts of unemployment followed by periods of full employment. Finally, the authors show that a decline in the time discount rate increases the average growth rate and the average unemployment.
Contemporary research on entrepreneurship in the context of regional economic growth and development has emphasized three noteworthy points.1 First, entrepreneurship involves an intertemporal process in which new firms are being created, existing firms are growing, and unsuccessful firms are winding down their operations. As noted by Fischer and Nijkamp (2009, 184), this “can be thought of in terms of the Schumpeterian notion of creative destruction.” Second, entrepreneurship involves control of this intertemporal process by the entrepreneur/owner who also serves as a manager of risk. Finally, entrepreneurship entails innovation in a probabilistic and competitive market environment.
In addition to emphasizing the above three points, the sizable but mainly empirical and case study-based literature on the trinity of entrepreneurship, innovation, and regional economic growth has addressed a number of other pertinent issues. For instance, Lorentzen (2008) has used network theory and empirical results to argue that firms find knowledge sources on different spatial scales and that global networks and knowledge sources are very beneficial to them. Michael and Pearce (2009) note that through innovation, entrepreneurship creates wealth for both individuals and nations. Therefore, these authors contend that it makes sense for governments to support entrepreneurship because by doing so, these same governments are actually encouraging innovation. Nijkamp (2009) pays particular attention to what he calls the regional action space of entrepreneurs and then he surveys the nexuses between entrepreneurship and regional economic growth. In their study of the role of regional clusters on regional entrepreneurship, Delgado, Porter, and Stern (2010) come to two salient conclusions. First, they point out that industries that are located in regions with strong clusters experience higher growth in both start-up employment and in new business formation. Second, they note that strong clusters contribute to the survival of start-up firms. Focusing on what they call divided societies, Friedman and Desivilya (2010) argue that social entrepreneurship can be a very useful strategy for promoting regional development if it is combined with conflict management. Samila and Sorenson (2011) argue plausibly that there is a strong nexus between the availability of venture capital and entrepreneurship. Their specific conclusion is that “venture capital stimulates the creation of more firms than it funds…” (Samila and Sorenson 2011, 338).
Lambson and Phillips (2007) study a discrete-time Schumpeterian growth model and show that in general equilibrium, Bertrand competition results in random switching between monopoly and competitive production. Schwartz and Gothner (2009) empirically analyze the extent to which business incubators have been successful in promoting entrepreneurship, innovation, and regional economic development. Valliere and Peterson (2009) use data from the Global Entrepreneurship Monitor and the Global Competitiveness Report and show that in developed nations, a significant fraction of the economic growth rates can be attributed to high expectation entrepreneurs who exploit national investments in knowledge creation and regulatory freedom. Focusing on the links between knowledge and innovation, Vaz and Nijkamp (2009) develop a “knowledge circuit model” that takes into account all the pertinent stakeholders and then offers a framework for research in applied policy problems. Henderson and Weiler (2010) first sketch the salient relationships between entrepreneurship, innovation, and economic growth and then they empirically assess the relationship between entrepreneurship and job growth across US labor market areas and counties.
To conclude this review of the literature, let us now briefly focus on geographically disparate studies of entrepreneurship and regional economic development. After pointing out that innovations and the capacity to innovate are crucial factors for regional development, Cornett (2009) focuses on Denmark and studies the factors that facilitate regional growth and the mechanisms that stimulate innovative behavior in large-, small-, and medium-sized enterprises. Akgun, Baycan-Levent, and Nijkamp (2010) study the connection between entrepreneurship and “counterurbanization” in Turkey and point out that the pursuit of employment is the key to understanding this salient connection. Audretsch, Dohse, and Niebuhr (2010) study various regions in Germany and note that regions with a high level of knowledge provide more opportunities for entrepreneurship than other regions. In addition, “the diversity of people is more conducive to entrepreneurship than the diversity of firms” (Audretsch, Dohse, and Niebuhr 2010, 55). Focusing on China, Qian (2010) points out that the existing stock of human capital rather than the so-called creative class has a positive influence on the trinity of innovation, entrepreneurship, and regional economic performance. Folmer, Dutta, and Oud (2010) concentrate on the state of West Bengal in India and contend that if the objective of policy is to encourage rural industrial entrepreneurship, then it is important to comprehend that properly functioning capital markets in rural areas can not only stimulate rural industrialization but also such markets can prevent the development of inefficient rural industrial activities. Andersson and Koster (2011) focus on start-up formation in Sweden and point out that the determinants of start-ups are both “sticky” and “durable” and that there is a path dependence in start-up activities in the form of a response mechanism between earlier and current start-ups.
Contributions of this Article
The articles discussed in the preceding three paragraphs have certainly enhanced our understanding of the many nexuses between the trinity of entrepreneurship, innovation, and regional economic growth. This notwithstanding, there are several areas of research concerning the above mentioned trinity in regional science that are salient but remain either unstudied or inadequately studied. Given this state of affairs, we now make three points to motivate and stress the importance of the questions that comprise the subject matter of this article.
First, entrepreneurship plays an important role in promoting regional economic growth and development. In this regard, Fischer and Nijkamp (2009, 184) correctly note that, “[e]ntrepreneurship…is central to regional economic development.” Fischer and Nijkamp (2009, 183) go on to say that an “entrepreneurial culture is a prerequisite for the wealth of regions…” Finally, Capello and Nijkamp (2009, 2) tell us that “the role of knowledge and entrepreneurship…” is one of the salient research topics in the study of regional economic growth and development.
Second, there are links between entrepreneurship, innovation, Schumpeter’s notion of creative destruction, and regional economic growth and development. The link between entrepreneurship and innovation is obvious. In the words of Fischer and Nijkamp (2009, 185), “entrepreneurship entails innovation.” Similarly and consistent with the discussion in the first paragraph of the “Review of the Literature” section, there is an important link between the idea of creative destruction and regional economic growth and development. Florida (1996, 314, emphasis in original) recognizes this link when he says that “there is a geographic or regional element to the transformative forces which Schumpeter identified as gales of creative destruction…” Pe’er and Vertinsky (2008, 280) also point to this link when they say that “a local process of creative destruction provides an impetus to regional industrial renewal.”
Third, entrepreneurship is dynamic, endogenous, and stochastic, and it along with innovation has a great bearing on regional economic growth. In addition, to the best of our knowledge, there are virtually no theoretical studies that are both dynamic and stochastic in nature and that study the ways in which entrepreneurship and innovation endogenously influence economic growth in a regional economy. Given this state of affairs, in our article, we analyze deterministic and stochastic versions of a stylized one-sector Schumpeterian model of growth in a regional economy in discrete-time in which consumers display constant relative risk aversion (CRRA), there is no population growth, monopolistic entrepreneurs produce intermediate goods of distinct qualities, and a single consumption good is produced competitively. Our use of an endogenous growth model is worthwhile because of three reasons. First, the use of such a model provides clear and analytically tractable answers to complicated questions. Second, our approach allows us to shed light on the “micro-foundations” of the relevant knowledge spillovers and this is a topic that “deserves further attention by future research” (Minerva and Ottaviano 2009, 96). Finally, as noted by Audretsch and Aldridge (2009) and Denti (2009), our perspective is consistent with the approach adopted by the authors of related studies in the extant literature in economics and regional science.
In the deterministic version of the model, R&D in time necessarily leads to a vertical, process innovation in time . In this setting, we first characterize the balanced growth path (BGP) for our regional economy and then we compare the BGP growth rate with the Pareto optimal growth rate. Next, in the stochastic version of the model, R&D in time probabilistically leads to a vertical, process innovation in time . In this setting, we undertake four analytical tasks. First, we define the equilibrium and the steady state BGP allocations. Second, we generalize the notion of the steady state and determine the number of unemployed workers. Third, we show that our regional economy experiences bursts of unemployment followed by periods of full employment. Finally, we point out that a decline in the time discount rate increases the average growth rate and the average unemployment in our regional economy.
The rest of the article is organized as follows. The section titled “Preliminaries” first describes the deterministic version of the one-sector Schumpeterian model that is adapted from the prior work of Grossman and Helpman (1991a, 1991b) and Aghion and Howitt (1992). The section titled “The Equilibrium and the BGP” describes the BGP and then specifies restrictions on the parameters so that the pertinent transversality condition is satisfied. The next section compares the BGP growth rate with the Pareto optimal growth rate and shows that the quality or size of innovations in the BGP equilibrium is too small relative to the size of innovations in the Pareto optimal allocation. The following section titled “Preliminaries” for “The Stochastic Schumpeterian Model” delineates the stochastic version described in the section titled “Preliminaries” for “The Deterministic Schumpeterian Model.” The sections titled “The Steady State and Unemployed Workers,” “Unemployment and Employment Patterns,” and “Average Growth Rate and Unemployment” provide a detailed discussion of the four analytical tasks described in the previous paragraph. The final section concludes and then discusses potential extensions of the research delineated in this article.
The Deterministic Schumpeterian Model
Preliminaries
We begin by focusing on a stylized regional economy that is subject to the forces of innovation. To this end, consider an infinite horizon regional economy in which only a single sector, that is the subject of study in this article, experiences quality improvements over time. Time is discrete. Since we are interested in working with a model of endogenous technology, firms and individuals in our regional economy must ultimately have a choice between different kinds of technologies and, in this regard, greater effort, investment, or research spending ought to lead to the invention of better technologies. These features tell us that there must exist a metaproduction function or a “production function over production functions,” which tells us how new technologies are generated as function of various inputs. Following Acemoglu (2009, 413), we shall refer to this metaproduction function as the “innovation possibilities frontier.” It is important to note that we are using the term inputs in a very general sense. In other words, these inputs can be intermediate goods, machines, or even capital. With this caveat in mind, in the remainder of this article, we shall refer to these inputs as “intermediate goods.”
Consumers in our regional economy display CRRA and their utility function in time is , where is consumption in time t, and θ is the constant coefficient of relative risk aversion.2 In what follows, we shall abstract away from issues related to population growth in our regional economy.3 The consumption good sector in our regional economy has the production function
where is the output of the consumption good, is the quality of the unique intermediate good used in production, is the quantity of this intermediate good used in time is a parameter, and is the amount of labor used in the production of the consumption good in time .
The total endowment of labor (workers) in our regional economy is and . In other words, in any time t, workers in this economy can work either in the consumption good sector or in the R&D sector where entrepreneurs with research firms engage in innovative activities and thereby attempt to invent new intermediate goods. An entrepreneur—with a research firm—who successfully generates an innovation can use this innovation to effectively monopolize the intermediate good sector. Note that this “monopolistic entrepreneur” remains a monopolist only until the appearance of the next innovation. Put differently, we can think of this monopolist as having acquired a patent on the new intermediate good that lasts for one time period.4 There is a linear technology for the production of the intermediate goods so that an intermediate good, once invented, can be produced at the constant marginal cost in terms of the consumption good. The use of this intermediate good as an input permits more efficient methods to be used in the production of the consumption good (see equation 1).
The “engine” of regional economic growth in our article is process innovations that lead to quality improvements. As such, the R&D technology in our regional economy is such that the use of workers in time necessarily leads to an innovation in time and the number of workers used in research determines the quality or the size of the innovation via the function . Put differently, if date quality of an intermediate good is q, then the new date intermediate good has quality . Now, to stress the salience of labor use in the R&D sector for the occurrence of innovations, we suppose that innovations in our regional economy occur only when . In addition, for mathematical tractability, we suppose that the function is strictly increasing, differentiable, strictly concave, and that it satisfies the so-called Inada conditions.5
In this article, when we refer to a “regional economy,” we are referring to the economy of a locality that is smaller than that of a nation. The structure of our theoretical model and the assumptions we have made in this section are consistent with this interpretation. In this regard, we claim that our investigation of a single final good sector, our abstracting away from population growth issues, and our disregard of financial matters in general can be defended precisely because we are studying a regional economy in the sense mentioned above. The above features of our model would be less defensible were we to focus instead on a national economy. With this background in place, the task for us now is to characterize the BGP for our regional economy. In the course of doing so, we shall specify restrictions on the parameters of our model so that the pertinent transversality condition is satisfied.
The Equilibrium and the BGP
As a precursor to characterizing the BGP, let us first describe an equilibrium in our regional economy. To this end, given the current quality of the intermediate good, let and denote at time t, the price of the intermediate good, the interest rate, and the wage, respectively. Now, given the current quality and a deterministic path for this quality , an equilibrium is a collection of time paths or trajectories of allocations and prices
with the property that the representative consumer maximizes utility, the consumption good sector maximizes profits given prices, the monopolistic intermediate good producer chooses quantities and prices to maximize profits, the R&D sector hires researchers to maximize profits, and all markets clear.
The representative consumer’s optimization problem gives us the Euler equation
where ρ is the time discount rate, and the transversality condition
where V(t/q) is a value function that represents the net present discounted value of owning the blueprint of an intermediate good of quality q in time t. Since the representative consumer is risk neutral, we can tell that the coefficient of relative risk aversion θ = 0. Hence, the Euler equation (equation 3) is satisfied if and only if the interest rate is the inverse of the time discount rate. In symbols, the pertinent condition is
An obvious implication of equation (5) is that the interest rate is constant in equilibrium.
The consumption good producers' maximization problem gives us the following demand function for intermediate goods
Now, to reduce the number of cases that we need to study and also to clearly bring out the key Schumpeterian aspect of our model, we suppose that once a new intermediate good is invented, the old vintage is destroyed through obsolescence—this is the Schumpeterian creative destruction in our model—and hence the new “monopolistic entrepreneur” faces no competition from previous incumbents and he can price his intermediate good at the unconstrained monopoly price.6 Since the monopolistic entrepreneur or the intermediate good producer faces a demand function that is isoelastic, his pricing decision satisfies
Recall that in equation (7) is the constant marginal cost—in terms of the consumption good—with which an invented intermediate good can be produced. Equation (7) also tells us that and that per period profits are Knowing these last two expressions, we can tell that wages are now given by
and the output of the consumption good sector is given by
In this deterministic Schumpeterian model, the current monopolistic entrepreneur gets replaced by a different monopolistic entrepreneur in the next time period with certainty. Therefore, the present monopolistic entrepreneur’s value function is only the period profits and this is given by
Given current quality , the R&D sector solves
first-order necessary condition for an optimum to the above maximization problem is
The reader should note that in our deterministic Schumpeterian model, the R&D sector makes profits in equilibrium.7 As such, we suppose that the shares of these R&D firms are held equally by the consumers in our regional economy so that profits accrue to the representative consumer.
Having described the equilibrium for our regional economy, we are now in a position to delineate a BGP equilibrium in which the allocation of labor is constant over time, that is, and for all . Since the innovation function satisfies the Inada conditions, equation (12) will always have an interior solution and, in addition, a particular condition is satisfied. Using equations (5), (8), and the labor market clearing condition we can write this particular condition as
Equation (13) tells us that in the regional economy under study, the BGP allocation of labor to the R&D sector or depends on the monopoly markup, the time discount rate, and the R&D technology. In particular, this BGP allocation does not depend on the quality of the existing intermediate good, because, on one hand, higher quality intermediate goods generate more profits but, on the other hand, higher quality intermediate goods raise wages and hence make additional innovations costlier.
The BGP equilibrium is completely characterized by equation (13). In fact, once we determine the values of and output (of the consumption good) is determined by equation (9) and consumption is given by the net output. In other words,
In each time period, the quality, and therefore output, consumption, and wages, all grow by the factor of . The transversality condition—see equation (4)—in our model will be satisfied as long as
From the above discussion, it follows that the constant growth path we have described is an equilibrium with positive growth whenever the parametric condition is satisfied. This completes the discussion of the equilibrium and the BGP equilibrium for our regional economy. We now proceed to compare the BGP growth rate with the Pareto optimal growth rate for our regional economy.
The BGP and the Pareto Optimal Growth Rates
Let us first compute the optimal choice of intermediate good production by the social planner, given that the quality of the intermediate good is and that employment in the production of the consumption good is For this static problem, the social planner solves
which tells us that
and that
Now, let us analyze the dynamic trade-off for the social planner and then determine the allocation of labor between the R&D and the other sectors. The social planner’s dynamic optimization problem is
subject to
and
The first-order necessary condition for an optimum for the choice variable is
Let us conjecture a solution to the above first-order necessary condition in which the allocation of labor is such that and are constant for all time t. Using this conjecture, the above first-order necessary condition simplifies to
which has a unique solution and hence our conjecture is verified. Note that our social planner’s optimization problem is weakly concave in the relevant choice variables. Therefore, it follows that the conjectured path that satisfies the first-order conditions is indeed optimal if the transversality condition ln holds. Then, the social planner’s allocation of workers in the R&D sector is also constant and given by the solution to equation (24). Further, quality, output, and consumption, all grow by the factor of .
Recall that the function is a strictly decreasing function. Using this piece of information along with equations (13) and (24), we conclude that
The above two results tell us that the social planner always allocates more labor to R&D and hence achieves a larger size of innovation and a higher growth rate. The reason for this outcome is the following. The social planner’s static allocation is unaffected by monopoly distortions that are captured by the term in equation (13) and that is absent in equation (24). Therefore, the social planner produces more intermediate goods for a given quality level. This means that every unit of quality that is innovated is more valuable to the social planner than to an equilibrium firm which, in turn, implies that the social planner innovates more and achieves a higher growth rate.
The above findings have three practical implications. First, a noninterventionist approach by an appropriate regional authority will not result in the optimal level of either research or growth in the regional economy under study. Put differently, there is an activist role to play for the pertinent regional authority. What kind of activist policy? This leads us to the second implication. Specifically, research subsidies may be needed to increase the growth rate of our regional economy. Third, note that inefficiencies exist in our decentralized regional economy because of the presence of monopoly markups. Therefore, subsidies that are designed to increase the production of intermediate goods are also likely to have a positive impact on the growth rate of our regional economy. This concludes our comparative discussion of the BGP and the Pareto optimal growth rates in our regional economy. We now move on and conduct a detailed analysis of the stochastic version of the basic, deterministic model of this section.
The Stochastic Schumpeterian Model
Preliminaries
The one-sector Schumpeterian model of this section is essentially the same as the one we analyzed in The Deterministic Schumpeterian Model the section. However, there is one key difference. Now, the function denotes the probability of innovation. Each innovation improves an intermediate good’s quality to where . Further, when a new innovation arrives, a fraction of workers employed in the consumption good sector are unable to adapt to this new technology and hence become unemployed for one time period. During this period, these unemployed workers “retrain” or “retool” themselves. Our task now is to define the equilibrium and the steady state BGP allocations for this stochastic Schumpeterian model.
Recall from the analysis in The Deterministic Schumpeterian Model section that risk neutrality on the part of consumers in our regional economy implies that the interest rate is given by
and that the equilibrium wages and profits are given by
and
basic new feature in the model of this section is the labor market. The specification of technology in the first paragraph of this section tells us that capturing this technological progress is the only way to generate growth in our model. However, this feature also imposes challenges on our regional economy in the short run. We can think of these challenges as either changes in the sectoral composition of labor or as the required skill level of the workforce. In what follows, we shall capture these features in a straightforward manner by simply supposing that a fraction of the workers employed in the consumption good sector will be unemployed in order to get retrained. Let us denote unemployed workers by so that total labor .
To capture the retraining aspect of our model, we will need to define and work with a new state variable. To this end, let denote the state of the economy. That is, we shall denote a state where there has been no innovation in the last period by (full employment) and a state where an innovation occurred in the last time period by (unemployment). Mathematically, we thus have
Using the notation in equation (29), we can express the number of unemployed people as
The timing of the various activities in our stochastic model is as follows. At time t, labor is allocated according to , and . With probability , there is an innovation in time so that tomorrow’s quality is given by . In this case, some people in the labor force allocated to work in the consumption good sector will be unemployed as they have to learn to work with the new intermediate good of higher quality. If there is no innovation, then we have and all workers allocated to the consumption good sector can be used for production. In other words, .
Let denote the total spending on intermediate goods in our regional economy. Then, an equilibrium in our regional economy now consists of time paths or trajectories of allocations , a value function and prices such that the representative consumer maximizes utility taking prices as given, the final (consumption) good producers maximize profits at given prices, the monopolistic entrepreneur producing the intermediate good maximizes profits, the R&D sector hires the optimal amount of labor (researchers) given the value function, and all markets clear. A BGP allocation is an allocation where the flow rate or probability of innovation is constant. Note that in our regional economy, this does not mean that all variables grow at a constant rate. Along the BGP, the probability of an innovation is constant but its actual occurrence is still a random variable. Finally, note that both the value function and the intermediate good prices are functions of the state variable , but wages are not. This completes our description of the equilibrium and the steady state BGP allocations for the stochastic Schumpeterian model under study in this section.
The Steady State and Unemployed Workers
We now wish to generalize the notion of the steady state and then determine the number of unemployed workers in our regional economy. To this end, let us first solve the model described in Preliminaries section. First, we need to find a value function to characterize the equilibrium behavior of the research firms. This naturally leads to the following question. What is the value of being the monopolistic entrepreneur with an intermediate good of quality This entrepreneur’s current profits are given by equation (28). In addition, Ken Arrow’s so-called replacement effect8 implies that the current incumbent (monopolistic entrepreneur) will not be active in research. Therefore, from this incumbent’s point of view, the probability that there is an innovation in time is the same as the probability that this incumbent will be replaced in the next time period. Now, denoting the replacement probability for an incumbent with quality in state in time by , the value of being a monopolistic entrepreneur is given by the functional equations
and
In writing equations (31) and (32), we have used the facts that the interest rate is constant and that the per period profits depend on the state variable via the available labor supply (also see equation 28).
To understand why we need two functional equations to pin down the value of innovation, note that in the first period of being a monopolistic entrepreneur, the state of our regional economy is since this monopolistic entrepreneur himself had the innovation in the last period. Hence, in his first period of using his innovation, the profits are lower since the economy is characterized by unemployment. In case this monopolistic entrepreneur does not get replaced (which happens with probability , he remains the sole provider of the intermediate good, and he obtains a value . This captures the fact that the quality stays the same because the incumbent monopolistic entrepreneur does not engage in research and, conditional on survival, the regional economy’s state is , as there was no innovation in time (otherwise the monopolist would have been replaced). The value of being the monopolist in state with quality then consists of the per period profits and the continuation value which arises with probability .
Let us now describe the BGP allocation in our regional economy. In the Preliminaries section, we have defined the BGP as an equilibrium in which the probability of an innovation is constant. The probability of an innovation is essentially the probability of replacement and this is given by . Because this replacement probability is only a function of the number of employed researchers, for to be constant, we need for all , and . Put differently, we need the number of researchers to be constant along a BGP. Using the market clearing condition for the labor market and equation (30), we can tell that the number of workers producing the consumption good and the number of unemployed workers are given by
and
Therefore, along a BGP, employment in production of the consumption good and unemployment are only a function of the state of the regional economy but independent of time and the current quality of the intermediate good. Using this fact and equation (28), we can solve for the BGP per period profits. We get
the constant BGP innovation probability by , we see that the value functions in equations (31) and (32) are independent of time and functions only of the current quality q and the state of the economy . Therefore, the value of being a monopolistic entrepreneur can be written as
Given the value function in equation (41), research firms select the number of researchers LR to solve
To understand the above maximization problem, note that if a research firm employs researchers, it achieves an innovation with probability . This innovation has a value of , but this value materializes only in the next time period and hence it is discounted. However, the wage bill has to be paid for in the present time period. Now, the number of researchers hired satisfies the following first-order necessary condition9
which, upon further simplification, reduces to
Along the BGP, we have and . Using these two conditions, we can rewrite equation (44) as
Note that equation (45) determines the BGP number of researchers as a function only of the parameters of the underlying problem. In particular and as required for the BGP, is neither a function of time and nor is it a function of the current quality . Recall that by assumption is a strictly concave function. Therefore, the left-hand side (LHS) of equation (45) is strictly decreasing in . In addition, we suppose that an Inada-type condition for the innovation function, namely , holds. Then it follows that there exists a unique value that solves equation (45).
If we compare equation (45) with the corresponding condition in the The Deterministic Schumpeterian Model section, we see that the structure of the deterministic and the stochastic regional economies is very similar. In the same section, the key equation which pinned down allocation in the labor market was equation (13). Now, if we let the constant fraction of workers who are unemployed and then we compare equations (13) and (45), then it is clear that the only difference in the two equations stems from the product of the parameter and the discount rate .This last discount rate incorporates in it the fact that existing patents now expire with probability instead of with probability one which was implicit in the analysis in the abovementioned section. Our penultimate task is to show that in the probabilistic setting of this section, our regional economy experiences bursts of unemployment followed by periods of full employment.
Unemployment and Employment Patterns
We begin by noting that we have already characterized the dynamic behavior of unemployment in our regional economy in equation (30). In the discussion leading up to equation (30) in the Preliminaries section, we noted that unemployment is positive whenever the labor force has to be retrained to adapt itself to the new technology and it is zero otherwise. However, in the one final good sector Schumpeterian model that we are studying in this section, innovations occur stochastically. Therefore, it is in this sense that our regional economy will feature bursts of unemployment followed by periods of full employment.
In particular, whenever a new innovation occurs—and this happens with probability —the regional economy under study experiences unemployment in the following period. In contrast, when no innovation takes place, all workers find jobs in the consumption good sector and the economy experiences full employment. We have seen that creative destruction can lead to the dislocation of previously employed workers who experience a period of unemployment before being employed again. Therefore, from a practical perspective, under some circumstances it may make sense to offer unemployment compensation/job retraining benefits to the dislocated workers. In addition, because creative destruction implies that productive units will have shorter horizons in a regional economy with rapid economic growth, workers in such an economy may be reluctant to make what Acemoglu (2009, 472) calls “a range of relationship-specific investments.” Our last task now is to demonstrate that a decline in the time discount rate increases both the average growth rate and the average unemployment in our regional economy.
Average Growth Rate and Unemployment
Total output of the consumption good in our regional economy along a BGP is proportional to quality. Mathematically, this means that
Along the BGP, the number of workers is given by equations (33) and (34). In other words, the number of production workers changes probabilistically. Now, to describe the average growth rate of our regional economy, note that conditional on being in state , the expected growth of the economy along the BGP is given, after some steps of algebra, by
To solve for the average growth rate, we need to derive the unconditional probabilities and that our regional economy is in states U and E, respectively. These probabilities and have to satisfy the equations and . The first of these two equations is the straightforward identity that there are only two states and the second equation follows from the fact that the probability of being in state U is independent of the current state. This observation tells us that
Now, using equation (47) the average growth rate in the economy is given by
After some additional steps of algebra, equation (49) can be simplified to
Now, to continue the analysis, let us assume that . This means that quality improvements are sufficiently large, so that the increase in labor productivity q dominates the effect of having a smaller labor force due to the necessity of retraining. Using this assumption and the fact that is an increasing function, it is clear that . Therefore, to analyze the impact of a change in the discount rate on the growth rate of the regional economy, we have to ascertain how the equilibrium number of researchers changes when the discount rate declines.
The allocation of researchers in our regional economy is determined by equation (45) which implies that is decreasing in the time discount rate . To see this clearly, note that the interest rate is increasing in the time discount rate (see equation 26). For a given level of researchers , the LHS of equation (45) is decreasing in r and the RHS is increasing in r. Hence, if equation (45) is to be satisfied at higher interest rates, the number of researchers has to decline as the LHS is decreasing in LR. This tells us that and therefore we deduce that a decline in the time discount rate increases the number of researchers employed and thus the growth rate of our regional economy. To understand this result intuitively, note that as decreases, the interest rate declines so that profits which materialize in the future are worth more today which is when research expenditures are incurred. This increases the incentive to invest in research which, in turn, increases our regional economy’s growth rate.
Finally, let us focus on the average unemployment rate in the regional economy under study. Since the unemployment rate depends only on the state of the economy and is given by
using equation (48), the average unemployment rate along the BGP is
Partially differentiating the LHS and the RHS of equation (52) with respect to gives us
We now claim that the last term on the RHS of equation (53) is positive. To see why this claim is true, observe that solves the maximization problem in (42) and that the research firms' maximand is given by , where Because
The above analysis tells us that the average unemployment rate is increasing in the number of researchers employed (see equation 53). In the above analysis, we have also demonstrated that a decline in the time discount rate will increase the equilibrium number of researchers. Therefore, the average unemployment rate is higher when the time discount rate and hence the equilibrium interest rate declines. From an intuitive standpoint, the reader will note that in our model, there is unemployment only because the use of new technologies requires retraining. Because a decline in the time discount rate ρ leads to a higher probability of innovation, worker retraining occurs more often and this results in a higher equilibrium unemployment rate.
Conclusions
In this article, we used a Schumpeterian model to conduct, to the best of our knowledge for the first time, an explicitly dynamic and stochastic analysis of the ways in which vertical innovations and entrepreneurial activities interact to endogenously generate growth in a regional economy with a single final (consumption) good sector. We first characterized the equilibrium and the BGP for the deterministic version of our model and then we conducted a comparative analysis of the BGP growth rate with the Pareto optimal growth rate for our regional economy. This analysis showed that relative to the BGP allocation, the social planner always employed more labor in R&D, achieved a larger size or quality of innovation, and hence a higher rate of growth.
Next, we studied the stochastic version of our model and this study led to four outcomes. First, we defined the equilibrium and the steady state BGP allocations for our regional economy. Second, we generalized the notion of the steady state and we ascertained the number of unemployed workers. Third, we showed that our economy experienced bursts of unemployment followed by periods of full employment. Finally, we pointed out that a decline in the interest rate increased the average growth rate and the average unemployment rate in our regional economy.
At several points in the article, we provided practical implications of our analysis. In this regard, two additional points deserve some emphasis. First, it is important to comprehend that when we talk about policy interventions that will possibly close the gap between the BGP (decentralized) equilibrium and the Pareto optimal allocation, we also have to consider the objectives of policy makers in our regional economy. This is a topic that raises questions of political economy, a subject that we have not considered in this article. Second, when considering the role of competition policy in a regional economy of the sort studied in this article, it is pertinent to keep in mind that there will sometimes be a trade-off as far as regional economic growth and welfare are concerned. Specifically, policies that have a salutary impact on welfare may not have a similar effect on economic growth and vice versa, and this too is an issue that we have not addressed in the present article.
The analysis in this article can be extended in a number of directions. Here are two suggestions for extending the research delineated in this article. First, it would be instructive to formalize some of the ideas in Jones, Kierzkowski, and Lurong (2005) and analyze a scenario of the sort studied in this article but with the key difference that the R&D sector is characterized by the presence of agglomeration effects. Second, it would be useful to determine the extent to which an existing modeling framework such as the one employed by Suga (2007) can be used to analyze the innovation/entrepreneurship/growth nexus in a model in which there are multiple open regions that trade with each other. Studies of the connections between innovations, entrepreneurial activities, and economic growth that incorporate these features of the problem into the analysis will increase our understanding of the many and varied forces that collectively lead to the development of dynamic and stochastic regional economies.
Footnotes
Acknowledgments
For their helpful comments on a previous version of this article, the authors thank the Editor Sergio J. Rey, two anonymous referees, and participants in (1) the Tinbergen Institute Workshop in Amsterdam, The Netherlands in May 2010, (2) the RSAI Japan Section Annual Meeting in Tokyo in October 2010, (3) the RSAI NARSC Annual Conference in Denver, Colorado in November 2010, and (4) the SRSA Annual Conference in New Orleans in March 2011. Batabyal acknowledges financial support from the Gosnell endowment at RIT. The usual absolution applies.
The author(s) declared no potential conflicts of interest with respect to the research, authorship, and/or publication of this article.
The author(s) received no financial support for the research, authorship, and/or publication of this article.
Notes
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