3.2.1. Three-Stage DEA Results
In this paper, software Deap2.1 is used to evaluate the enterprise innovation efficiency of software and information technology services in China. The detailed results are shown in
Table 3. According to the results in
Table 3, in 2017 the means of innovation efficiency, pure technical efficiency, and scale efficiency are 0.492, 0.606, and 0.835. The corresponding data for 2018 are 0.688, 0.758, and 0.903, respectively, which is slightly improved. Obviously, most companies achieved non-effective efficiency in both 2017 and 2018, which was caused by pure technical efficiency and scale efficiency, and the impact of pure technical efficiency was greater than scale efficiency overall.
According to the value differences, enterprise efficiency can be divided into five categories from good to bad in stage one: Best (1), Good (0.8–1), General (0.4–0.8), Bad (0.2–0.4), Worse (less than 0.2).
As shown in
Table 4, 11 (13.75%) and 27 (33.75%) companies were viewed as “Best” in 2017 and 2018, which had achieved DEA effectively and were at the frontier of efficiency. Eight (10%) companies were viewed as “Good” during these two years. The number of “General” companies are 19 (23.75%) and 29 (36.25%), respectively. The number of “Bad” and “Worse” companies are 42 (52.5%) in 2017 and 16 (20%) in 2018. These companies were not on the frontier of efficiency, were non-DEA effective, and accounted for 86.25% (2017) and 66.25% (2018). The number of companies with increasing and decreasing returns to scale is 16 and 50 in 2017, respectively, while only three companies (Digital China Information, Dongfang Electronics, Teamsun) kept constant returns to scale. While in 2018, the companies of returns to scale with increasing, decreasing, and constant is five, forty-four, and four (Qiming Information, COSCO SHIP TECH, Shenzhen DVX, HopeRun Software).
In summary, more than 80% of companies still had room to improve innovation efficiency in 2017, this number decreased slightly in 2018, but it also exceeded 60%, indicating that there is huge room for improvement. Further, because of the bigger impact of the low pure technical efficiency, enterprises should pay attention to the internal management capacity for innovation and take measures to improve the current technical level.
Results in stage one ignored the influence of external environmental variables and random errors and should be eliminated. In stage two, this paper used the standardized environmental variables as dependent variables and the input slacks variable (the difference between original input value and target input value, namely, input redundancy mentioned below) as independent variables, and established the SFA regression model year by year. Having calculated the parameters with Frontier 4.1 software and decomposed the value of slacks in Excel, the regression results of 2017 and 2018 are listed in
Table 5 and
Table 6.
The influence of various environmental variables on input slacks (R&D personnel, R&D expenditure, labor capital, and productive capital) can be determined by the positive or negative value of the regression coefficient. In the case of the regression coefficient being a positive value, continuing to increase the input will increase its redundancy, which is not conducive to enterprise innovation; on the contrary, in the case of the regression coefficient being a negative value, continuing to increase the input will reduce redundancy, which is advantageous for enterprise innovation. According to this principle, the coefficient value of each environmental variable can be analyzed year by year, and then it can be judged how to adjust the input to improve the innovation efficiency of the enterprise.
From
Table 5 and
Table 6, all tests of environmental variables basically reach the significance level of 1%. The value of LR,
, and
also pass the significance test of 1%. Meanwhile, each regression model value of
approaches one. These results demonstrate that the selected environmental variables are reasonable and have significant impacts on the innovation efficiency of sample companies, and SFA for regression analysis is very suitable, while the dominant impact of innovation efficiency is management inefficiency while random factors are insignificant.
(1) Company age. In 2017, the company age of sample companies is positively correlated with input slack variables such as R&D personnel and labor capital. On the contrary, they are negatively correlated with input slack variables such as R&D expenditure and labor capital. In 2018, except for productive capital with a negative correlation, others are positively correlated. It indicates that the older companies with an accumulation of technology and experience have a better use of R&D equipment. However, the fund of R&D expenditure has a lower utilization rate, and so does manpower investment. To a certain extent, it explains why the innovation efficiency of overall enterprises is not high.
(2) Personnel quality. The personnel quality of most companies is negatively correlated with the slack variables of each input, behaving positively correlated with productive capital only in 2018. It indicates that the greater the proportion of employees with a master’s degree and above, the easier it is to enhance employees’ sense of identity with the company and maintain a good R&D atmosphere, thereby gradually increasing the utilization rate of both manpower and financial resources. Regrettably, there will be some redundancy in the utilization of R&D or production equipment after the accumulation of high-level personnel.
(3) Market share. The market share of sample companies shows a negative correlation with R&D expenditure and productive capital input slack variables only in 2018. The rest of the time, especially in 2017, shows a positive correlation. With the accumulation of company main business income, the market share is increasing, and its position is becoming more and more stable. Therefore, it has become richer in talent recruitment, R&D investment, and equipment purchases. Inevitably, some redundancy is created in human, material, and financial resources. The overall innovation efficiency in 2017 is so low and inseparable from these factors.
(4) Enterprise scale. The enterprise scale is positively correlated with each input slack variable in 2018, while in 2017 it is only positively correlated with production capital; the rest is negatively correlated. It indicates that there is a small redundant space for R&D personnel, R&D expenditure, and enterprise employees when the enterprise scale is small, which basically realizes the high utilization of human and financial resources. However, a lack of experience requires introducing R&D talents and expanding the scale of employee recruitment when the enterprise scale expands. As a result, the rapid expansion has led to a mismatch of capabilities in various fields, causing multi-party redundancy. At this time, enterprises are in need of a firm foothold, so innovation efficiency is low.
(5) Economic level. From 2017 to 2018, the economic development level of the city where the company is located is positively correlated with R&D personnel, R&D expenditure, and labor capital, while productive capital is negatively correlated, but the significance level of the coefficient test is not high. It is easy to form an industrial cluster effect where the higher the regional economic development level, the more convenient the transportation and the higher the consumption levels. It is stacked growth in the aspects of manpower, material, and financial; the waste caused by this high investment is obvious compared with underdeveloped areas.
(6) Total imports and exports. The total of imports and exports only has a positive correlation with the slack variable of R&D personnel in 2017, and all shows a positive correlation in 2018. When opening up to the outside world is slow, there is less technology introduction and talent and technology exchanges; on the contrary, when expanding its degree of opening up, the dependence on foreign technology and capital investment both increase, and the passion for independent research and development decreases.
(7) Government subsidies. There is a different correlation between 2017 and 2018 about government subsidies for enterprise innovation.
Table 5 reflects a positive correlation on many inputs such as R&D personnel, R&D expenditure, and labor capital, while it is the opposite in 2018, and has a negative correlation on inputs except R&D expenditure. It indicates that government has achieved a better expectation effect in supporting the innovation of enterprises whereby the waste of other inputs has been reduced except redundancy in R&D expenditure. However, it seems to require a buffer period for the enterprise, the short-term rate of utilization is lower and easier to cause redundancy in funds.
(8) Loan level. The level of financial development has a different effect on various input redundancies in 2017 and 2018. Except that the impact of R&D personnel input redundancy is negatively correlated, R&D expenditure, labor capital, and productive capital are all positively related. On the contrary, each of them shows a negative correlation in 2018. It indicates that there is a growing loan balance of the financial institution in the province where the company is located. The redundancy of R&D personnel would be reduced in 2017; oppositely, the utilization rate of various inputs would be fully improved in 2018.
In brief, R&D personnel and labor capital were the most heavily invested, followed by R&D expenditure, and finally productive capital investment in 2017. Its situation changed slightly in 2018, the specific performance is redundancy of inputs which is more focused on R&D personnel, R&D expenditure, and labor capital, with only productive capital having less redundancy. Owing to environmental variables which had important impacts on the innovation efficiency of sample companies, companies in each evaluation unit were in different external environments and did not have the same level of luck, which led to low innovation efficiency of the entire enterprise. The original input must therefore be adjusted.
After obtained the adjustment input in stage two, we ran the BCC model again to calculate the enterprise innovation efficiency of the software and information technology service industries. The results are summarized and showed in
Table 7.
As shown in
Table 7, without the influence of the environmental variable, the mean enterprise innovation efficiency of software and information technology service is 0.728 (in 2017) and 0.755 (in 2018). The mean values of pure technical efficiency and scale efficiency have increased by varying degrees, the former from 0.783 to 0.802, and the latter from 0.932 to 0.964. Compared with the innovation efficiency value calculated in stage one, innovation efficiency and pure technical efficiency have been greatly improved within two years, and the scale efficiency has a small fluctuation range. By comparing the data of 2017 and 2018 in
Table 7, the fluctuation of scale efficiency can be observed. It can be inferred that enterprises realized their problems and made adjustments and improvements. The further analysis of efficiency changes is as follows.
(1) Changes in innovation efficiency. Twelve companies had an innovation efficiency value of one in 2017, a year-on-year decrease of 9.1%, while the innovation efficiency of 60 companies had improved with an average increase of 158.75% year-on-year. In these companies, Digital China Information and Hundsun had the fastest improvement, an increase of more than 600%; Sinonet and Enjoyor improved less than 5%. The innovation efficiency value of six companies including Gci Science Tech and Lanxum increased to one. The innovation efficiency of fourteen companies had declined including Bewinner Tech, Wisesoft, and Wantong Technology, etc., and the largest declining companies were Wisesoft and Huahongit, which exceeded 40%. In addition, six companies including Teamax and Lianluo Interactive remained constant. Twenty-four companies had an innovation efficiency value of one in 2018, which was 11.1% lower than before the eliminated influence of the environmental variable. In other companies, the innovation efficiency of forty-two companies had improved, with an increase of 64.07% year-on-year, while the innovation efficiency of twenty-three companies had decreased. The largest declining companies had reached the rate of 57.7%, except for the companies SUNA and Huahongit. Others displayed a slow change trend, and 43.5% of the companies dropped by less than 10%. Fifteen companies maintained a constant value of innovation efficiency including Century Real, Thunisoft, and Bluedon, etc.
Figure 1 and
Figure 2 denote the changes in innovation efficiency before and after adjustment in 2017 and 2018.
(2) Changes in pure technical efficiency. Fifty-three companies had improved pure technical efficiency which accounted for 66.25% of the samples in 2017. The actual level of Digital China Information and Hundsun was seriously underestimated. The pure technical efficiency of thirteen companies had fallen, and the biggest change was Wisesoft (48.8%), while fourteen companies remained constant. Thirty-five companies had improved pure technical efficiency, accounting for 43.75% of the samples in 2018, and six companies including Iflytek and Lanxum had improved by a large margin, all exceeding 103%. Precisely 57.14% of the companies have exceeded the average level. The pure technical efficiency of twenty-eight companies had decreased, with an average decrease of 18.73%, and SUNA reached a maximum value of 51.1%. In addition, seventeen companies remained constant in pure technical efficiency.
(3) Changes in scale efficiency. Forty-four companies saw scale efficiency increase by an average of 50.02% in 2017, whereby Century Huatong and Taiji had the largest increase, both exceeding 225%. Twenty-nine companies saw scale efficiency exhibit a slight decline, with an average value of only 3.56%. Seven companies maintained their scale efficiency constant. The scale efficiency of forty-four companies increased by an average of 17.62% in 2018. Watertek Information, Hundsun, Montnets Group, and Goldcard Smart were four companies that had increased by a large margin with all exceeding 50%. Twenty-one companies had changed less than 10%. Twenty companies had slightly reduced scale efficiency, with an average fluctuation of 2.8%. The scale efficiency of sixtenn companies remained constant. In addition, the companies with constant returns to scale were fifteen (18.75%) in 2017 and twenty-eight (35%) in 2018. Nearly two-thirds of these companies are not at the optimal scale of innovation and have a lot of room for growth.
Based on the above analysis, it is concluded that pure technical efficiency and scale efficiency jointly lead to the current situation of low enterprise innovation efficiency, and pure technical efficiency has dominant influences on enterprise innovation in many companies. It indicates that most companies’ current innovation scale does not match the optimal innovation scale. It is necessary to improve management level and technical capabilities and adjust the innovation scale. The empirical results show that after removing the influence of environmental factors and random errors, the adjusted innovation efficiency can better reflect enterprise innovation status.