R&D is a measure of innovation efforts. The predicted value of this variable is used in subsequent estimations. All other variables are defined previously.
Table 9 reports the results of the R&D model, where spending in R&D activities is a dependent variable, while a series of variables are used as independent variables. Because the dependent variable is a continuous variable and the data are survey-based, the ordinary least squares (OSL) method is used to estimate the determinants of R&D spending. The results reveal that market share, export to the US and EU, internal sources, spending objectives in process innovation, outsourcing, customers as a source of income, and government subsidies variables have a statistically significant impact on the research and development spending of the firm.
The market share of the firm has a significantly positive impact on the innovation efforts of the firm, where innovation efforts are approximated by the R&D spending. It indicates that if the market share of the firm increases by 1 unit, then spending on R&D activities is increased by 0.02 units. Surprisingly, the employees’ training for innovation and the size of the firm have no statistically significant impact on the R&D spending. As far as exports are concerned, the firms that export products to the US and European countries are more likely to spend on R&D activities. On the other hand, the firms that export products to South Asian countries are less likely to spend on R&D activities, which is also statistically insignificant. Moreover, internal sources have a significantly positive impact on R&D spending. It indicates that a 1 unit increase in the use of internal sources to produce innovational goods leads to a 0.79 unit increase in R&D spending. If the objective of R&D spending is the production of new products, then it has no significant impact on the R&D spending of the firm. However, if the objective is process innovation, then it has a significantly positive impact on the R&D spending of the firm. Similarly, the results further show that the firm involved in outsourcing is more likely to spend on R&D activities because the coefficient of outsourcing is 2.80, which is statistically significant at a 1% level of significance. However, we have also identified many other variables that have no significant impact on research and development spending. These variables include active cooperation, a lack of educated employees, and exports. Lastly, the results indicate that government subsidies have a significantly positive impact on the firm’s decision to spend on R&D and on development activities. These results are in line with some earlier studies.
4.2.1. Estimation of a Stage 1 Model
The main model of this research consists of two stages. Stage 1 deals with the determinants of different types of firm-level innovations, while the second stage of the model examines the impact of different types of firm-level innovations. However, before estimating the first stage of the model, following the previous literature, we estimated the equation of research and development spending. According to [
15], R&D plays a vital role in firm-level innovation. However, several factors define the behavior of R&D. That is why before using R&D as an independent variable or a possible determinant of firm-level innovation, we estimate the R&D equation. After estimating the equation, the predicted values of the dependent variable are saved. The predicted values in this case are research and development spending. In stage 1 of the model, we use this predicted value of R&D as an independent variable in the firm-level innovation model estimation. According to the OSLO manual, firm-level innovation can be divided into two categories: product and process innovations, and marketing and organizational innovations. We estimated stage 1 for both product and process innovation, and marketing and organizational innovation, separately.
Table 10 provides the results of the product and process innovation modeling, where predicted research and development variables and a series of other variables are used as the explanatory set of variables. The reason for the inclusion of all these variables is to check which of them are the determinants of firm-level innovation.
Table 10 reports the estimated coefficients of product innovations and process innovation models. We used the Bivariate Probit technique to estimate the product and process innovation models. The reason for using this technique is based on the assumption that the firm decides product and process innovation simultaneously. In other words, following previous literature, we assumed that the manufacturing firms take both the decisions of product innovation and process innovation at the same time. To empirically check whether this assumption holds true or not, we find the
value of the bivariate probit model. The decision criteria are simple; if the
is other than zero, then we can say that both the decisions of product innovation and process innovation by firms are made at the same time. In
Table 10, the
value is 0.567, which verifies that the Pakistani manufacturing firms are making product innovation and process innovation decisions at the same time.
Table 10 reports that the R&D has a significantly positive impact on both innovations, i.e., product and process innovation. It infers that the innovation efforts in terms of R&D activities play a significant role in the production of new products and processes. These results are in line with the strand of previous literature [
10,
16,
41]. The results reveal that R&D spending is a key determinant of firm-level product and process innovations. Moreover, following Schumpeterian analysis, we hypothesized that bigger business organizations are more likely to produce innovative products and services. However, empirical analysis reveals that the size of the firm has no significant impact on the product and process innovations because the coefficients are statistically insignificant. Similarly, the second part of the Schumpeterian hypothesis of innovation, that
old-aged firms are more likely to produce innovative products and processes, has been empirically verified by the data.
Table 10 reports that the ages of firms play a significant role in the production of innovative products and processes. This finding is also in line with the previous literature on the same subject.
Next, we evaluate how the variables related to exports influence firm-level innovations. The variables used to define export market orientation include ’export to South Asia’ and ’export to US & EU’. The results depict that market orientation does not play any role in product and process innovation. It confirms that export to South Asian economies or Western economies does not matter in terms of the production of innovative products and processes. Additionally, we examine how local and international competition influences product innovation and process innovation. The empirical findings report that local competition has a significantly positive impact on product innovation and process innovation, while foreign competition has a significantly positive impact on product innovation only, but not on process innovation. It infers that the competition, either local or foreign, plays a significant role in the production of innovative products in the Pakistani manufacturing sector. Among other variables, access to finance, product diversification, and taxation obstacle has no significant impact on product innovation. Furthermore, the audit of a firm, a lack of educated workers, and the training of employees have a significantly positive impact on product innovation. This infers that the variables related to human resources play an important role in the production of innovative products in the manufacturing sector of Pakistan. As far as process innovation is concerned, the auditing of the key performance indicators, the training of the employees, and taxation obstacles have statistically significant and positive impacts on the process innovation, while other variables have no impact on the process innovation.
Table 11 shows the results of Bivariate Probit estimation for marketing innovation and organizational innovation. Similar to the previous analysis, we used the Bivariate Probit technique to estimate the marketing and organizational innovation models. The reason for the use of this technique is based on the assumption that firms decide on marketing and organizational innovation simultaneously. Following the previous literature, it is assumed that the manufacturing firms take both decisions on marketing innovation and organizational innovation at the same time. To empirically check whether this assumption holds true for our case, we find the
value of the Bivariate Probit model. The decision criteria are simple: if the
is other than zero, then we can say that both decisions of product innovation and process innovation by firms are made at the same time. In
Table 11, the
value is 0.172, which verifies that the Pakistani manufacturing firms are making marketing and organizational innovation decisions at the same time.
Table 11 indicates that the R&D has a significantly positive impact on both marketing and organizational innovations, i.e., marketing innovation and organizational innovation, which infer that the innovation efforts in the form of allocating an amount for the R&D activities play a significant role in the marketing innovation and organizational innovation. Similar kinds of results are reported in the literature by several other scholars. The remaining variables show mixed kinds of impacts on marketing and organizational innovations. For instance, foreign competition, access to finances, taxation obstacles, and the training of employees have statistically significant and positive impacts on marketing innovation, while the age of the firm and product diversification also have a statistically significant but negative impact on marketing innovation. The remaining variables have no impact on the marketing innovations. On the other hand, the size of the firm, age of the firm, export to the US and EU, local competition, foreign competition, access to finance, audit of the firm, and taxation obstacle are identified as key determinants of the organizational innovations, with statistically significant and positive impacts. Only product diversification plays a negative impact on organizational innovation.
So far, we have examined what are the determinants of innovation efforts where innovation efforts are defined as the spending on research and development activities. Afterward, we analyze the impact of innovation efforts on product, process, marketing, and organizational innovations. Additionally, we identified what are the key factors that play a role in the production of the product, process, marketing, and organizational innovations. In other words, this research highlights the key determinants of product, process, marketing, and organizational innovations. These findings can play a significant role in the firm-level decision-making process. It can help the firms to decide on which factor they need to pay attention to if the purpose is innovation.
4.2.2. Estimation of the Stage 2 Model
In the last stage of the estimation process, we examined how the product, process, marketing, and organizational innovations impact on the firm performance in Pakistan, where firm performance is defined as the labor productivity, i.e., the total output divided by the total number of employees. Because product, process, marketing, and organizational innovations have their determinant factors, we estimated them separately in the previous stage and use their predicted values in this stage. To deal with the endogeneity problem, first, we estimated the research and development model and use its predicted value as an explanatory variable in the product, process, marketing, and organizational innovation estimations. In this stage, the predicted values of the product, process, marketing, and organizational innovations from the previous stage are used as explanatory variables to deal with the endogeneity problem.
Table 12 presents the results regarding the impacts of different types of innovations on firm performance in Pakistan.
Table 12 suggests that the coefficients of the factors that may or may not have had an impact on the performances of Pakistani firms, using the regression technique. As mentioned earlier, this research aims at examining the impacts of different kinds of firm-level innovation on firm performance after controlling for several other variables, including the capital per employee, raw material per employee, bonuses to employees, computer and website uses, and human capital. The results reveal that product innovation and organizational innovation have a significantly positive impact on firm performance in Pakistan. However, the results further indicate that process innovation and marketing innovation have no statistically significant impact on firm performance in Pakistan. Similar kinds of results are reported by different scholars [
6,
10,
18,
19]. It indicates that product innovation and organizational innovation are the key factors that can play a role in boosting the productivity of Pakistani firms. If the business objective is to boost firm productivity, Pakistani firms should allocate a substantial amount for research and development activities that can increase firm-level innovation and that lead to a higher firm performance in terms of labor productivity. Quantitatively speaking, if product innovation increases by one unit, the firm performance will be increased by 5.79 units in terms of firm productivity. Similarly, if organizational innovation increases by one unit, the firm performance will be increased by 6.52 units in terms of firm productivity. The results further highlight that organizational innovation has the largest impact on firm performance among all of the innovational types. Moreover, the results indicate that process innovation and marketing innovation play no significant role in boosting the firm performance in terms of productivity.
As far as the control variables are concerned, the capital per employee has a significantly positive impact on the firm performance. If the capital per employee increases by one unit, the labor productivity is increased by 0.523 units. The results further highlight that bonuses to employees negatively affect the firm performance. It shows that these kinds of perks do not play any significant role in the encouragement of employees to boost the firm performance. Furthermore, other variables such as raw material per employee, computer and website use, and human capital play no significant role in the firm performance. The insignificance of these variables implies that in the case of a developing economy such as Pakistan, they do not contribute to the labor productivity of the firms. To sum up, the capital per employee, product innovation, and organizational innovation are the key determinants of firm productivity in Pakistan.