Is There Any Difference in the Impact of Digital Transformation on the Quantity and Efficiency of Enterprise Technological Innovation? Taking China’s Agricultural Listed Companies as an Example
Abstract
:1. Introduction and Literature Review
1.1. Background
1.2. Literature Review
2. Study Design
2.1. Theoretical Analysis and Research Hypothesis
2.2. Model Design
2.3. Variable Description and Data Sources
2.3.1. Explained Variables
2.3.2. Explanatory Variables
2.3.3. Control Variables
2.3.4. Intermediary Variables and Threshold Variables
3. Empirical Analysis
3.1. Benchmark Regression
3.2. Heterogeneity Analysis of the Role of Digital Transformation
4. Further Discussion
4.1. Exploration of the Reasons Why Digital Transformation Has Different Effects on the Quantity and Quality of Technological Innovation in Agricultural Enterprises
4.2. Exploration of the Conditions for Digital Transformation to Effectively Improve the Technological Innovation Efficiency of Agricultural Enterprises
5. Conclusions
- (1)
- The effects of digital transformation on the quantity and efficiency of technological innovation of agricultural enterprises are different. As the current digital transformation is in the developing stage, the impact on technological innovation has not reached the ideal level. Moreover, in order to ensure continuous competitive advantage in the market, companies are willing to conduct patent applications and other activities at the expense of high costs and a large number of resources. This has caused the problem of “high quantity and low quality” among enterprises to become more serious, and digital transformation cannot be effectively suppressed. Companies are also relying on digital transformation to optimize the innovation environment and further increase the number of innovations, but the attention to quality is obviously insufficient.
- (2)
- In terms of the nature of enterprises, the effect of digital transformation on the number of innovations of agricultural enterprises shows obvious differences, but the effect on the efficiency of technological innovation of agricultural enterprises is not differentiated. In the process of digital transformation, non-state-owned enterprises reduce financing constraints and ease information asymmetry, which provides quite favorable conditions for the number of innovations. Relatively speaking, the conditions of state-owned enterprises have reached the optimal level, and digital transformation cannot provide further assistance in reducing financing constraints. Therefore, the impact on the number of innovations is not significant. However, as far as innovation quality is concerned, the problem of a low degree of digital transformation still exists. It will still not have a significant impact on the innovation efficiency of the two types of enterprises.
- (3)
- The period expense ratio is the reason that the digital transformation has a different effect on the quantity and efficiency of technological innovation of agricultural enterprises. Expenses during the period reflect the current operating conditions of the enterprise. If the proportion of expenditures during the period is relatively large, there will be a waste of resources and increased costs, which will have an adverse impact on the innovation of the enterprise. Since some companies are pursuing an increase in the number of innovations, they are willing to sacrifice a higher cost in exchange for the number of innovations that tend to rise. However, the measurement of the efficiency of technological innovation will be adversely affected by the increase in expenses during the period, and digital transformation cannot currently solve this problem. Therefore, the period expense ratio is the reason that causes the digital transformation to have different effects on the quantity and quality of technological innovation.
- (4)
- The impact of digital transformation on the technological innovation efficiency of agricultural enterprises has a significant single-threshold effect, and when the period expense rate is small, digital transformation has a significant promotion effect. This shows that digital transformation can effectively promote the development of enterprise technological innovation quality under suitable conditions. The period expense ratio is a significant influencing factor in the process of digital transformation affecting the quality of technological innovation. When the period expense ratio is small, the company’s resource waste and cost increase are alleviated, and the promotion of digital transformation is also significantly improved.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Primary Indicators | Secondary Indicators | Indicator Description |
---|---|---|
Input indicators | R & D input | Investment of R & D funds in the annual report of listed companies |
Number of R & D personnel | Investment of R & D personnel in the annual report of listed companies | |
Output indicators | patents granted | Number of authorized invention patents of listed companies |
Main business income | Main business income of listed companies | |
Profitability | Tobin Q value of listed companies |
Variable Type | Variable Name | Variable Symbol | Variable Explanation |
---|---|---|---|
Explained variable | Number of enterprise technological innovation | lnPatent | Log (number of patent applications granted + 1) |
Enterprise technological innovation quality | Efficiency | Calculation using DEA model | |
Explanatory variable | Degree of digital transformation | Dig | Proportion of intangible assets related to digitalization |
Control variable | Enterprise debt ratio | Lev | Asset liability ratio of enterprises |
Ownership concentration | Only1 | Shareholding ratio of the largest shareholder | |
Proportion of fixed assets | Ppe | Proportion of fixed assets in total assets | |
Degree of financing constraints | Sa | SA index | |
Enterprise scale | Size | Total assets of the enterprise at the end of the year | |
Intermediary/threshold variables | Period expense rate | Ass | Sales expenses + administrative expenses + financial expenses/operating revenue |
VarName | Obs | Mean | SD | Min | Median | Max |
---|---|---|---|---|---|---|
lnPatent | 162 | 0.438 | 0.954 | 0.000 | 0.000 | 3.829 |
Efficiency | 162 | 0.285 | 0.395 | 0.000 | 0.079 | 1.000 |
Dig | 162 | 0.065 | 0.128 | 0.000 | 0.026 | 0.781 |
Lev | 162 | 0.448 | 0.191 | 0.059 | 0.421 | 0.980 |
Only1 | 162 | 32.382 | 15.610 | 4.080 | 30.950 | 70.000 |
Ppe | 162 | 0.269 | 0.139 | 0.048 | 0.244 | 0.643 |
Sa | 162 | 4.236 | 1.263 | 1.931 | 3.936 | 8.459 |
Lnsize | 162 | 22.269 | 1.033 | 20.320 | 22.089 | 25.535 |
Ass | 162 | 0.572 | 0.376 | 0.086 | 0.466 | 1.827 |
Tobit | ||||
---|---|---|---|---|
lnPatent (1) | Marginal Effect (2) | Efficiency (3) | Marginal Effect (4) | |
Dig | 39.283 ** | 0.818 * | −1.714 | −0.119 |
(2.333) | (1.751) | (−1.066) | (−0.731) | |
Lev | −6.130 *** | −0.818 ** | −0.594 *** | −0.090 |
(−2.639) | (−1.992) | (−2.727) | (−0.352) | |
Only1 | −0.036 | −0.012 *** | −0.013 *** | 0.010 |
(−1.048) | (−3.119) | (−2.748) | (1.479) | |
Ppe | 8.522 ** | 0.234 | 0.329 | 0.679 |
(2.347) | (0.501) | (0.779) | (1.490) | |
Sa | 0.403 | −0.028 | −0.080 | 1.053 * |
(0.242) | (−0.081) | (−0.343) | (1.850) | |
Lnsize | −0.776 | 0.194 | −0.108 | −1.500 ** |
(−0.357) | (0.670) | (−0.357) | (−2.110) | |
Time effect | YES | YES | YES | YES |
Individual effect | YES | YES | YES | YES |
_Cons | 16.273 | 3.641 | ||
(0.385) | (0.622) | |||
N | 186 | 186 | 186 | 186 |
2SLS (1) | 2SLS (2) | GMM (1) | GMM (2) | |
---|---|---|---|---|
lnpatent | Efficiency | lnpatent | Efficiency | |
Dig | 3.312 * | −2.308 | 3.740 *** | −0.629 |
(1.679) | (−0.443) | (2.643) | (−1.548) | |
Lev | −0.671 * | −0.181 | 1.793 *** | −0.029 |
(−1.836) | (−0.199) | (3.834) | (−0.119) | |
Only1 | −0.017 *** | −0.017 | −0.006 | 0.018 *** |
(−2.935) | (−0.369) | (−0.670) | (2.923) | |
Ppe | 0.621 | 1.334 | −4.338 *** | 1.543 *** |
(1.216) | (0.876) | (−5.464) | (4.347) | |
Sa | 0.554 | 0.571 | 3.994 *** | −0.593 * |
(0.937) | (0.274) | (6.925) | (−1.757) | |
Lnsize | −0.535 | −0.814 | −5.473 *** | 0.622 |
(−0.731) | (−0.277) | (−7.107) | (1.498) | |
Time effect | YES | YES | YES | YES |
Individual effect | YES | YES | ||
L.lnPatent | 0.438 *** | |||
(20.944) | ||||
L.efficiency | −0.033 | |||
(−0.730) | ||||
_cons | 11.070 | 17.483 | 105.685 *** | −12.009 |
(0.791) | (0.311) | (7.106) | (−1.519) | |
N | 135 | 135 | 108 | 108 |
State-Owned Enterprise (1) | State-Owned Enterprise (2) | Non-State-Owned Enterprises (3) | Non-State-Owned Enterprises (4) | |
---|---|---|---|---|
lnPatent | Efficiency | lnPatent | Efficiency | |
Dig | −2.845 | −3.264 | 11.695 * | 0.051 |
(−1.350) | (−1.570) | (1.900) | (0.035) | |
Lev | −0.392 | 0.088 | −1.116 | −0.520 * |
(−0.358) | (0.173) | (−1.281) | (−1.906) | |
Only1 | −0.010 | 0.008 | 0.003 | 0.001 |
(−0.731) | (0.524) | (0.102) | (0.143) | |
Ppe | −3.190 * | 0.939 | −4.087 * | 0.023 |
(−1.877) | (0.708) | (−1.940) | (0.035) | |
Sa | 3.580 *** | −1.570 ** | 2.185 ** | −0.726 * |
(2.911) | (−2.505) | (2.444) | (−1.883) | |
Lnsize | −4.169 *** | 1.535 * | −3.116 *** | 0.743 |
(−2.707) | (1.922) | (−2.965) | (1.594) | |
Individual effect | Yes | Yes | Yes | Yes |
_Cons | 81.529 *** | −29.063 * | 61.245 *** | −12.611 |
(2.688) | (−1.847) | (3.040) | (−1.412) | |
N | 72 | 72 | 114 | 114 |
Soble = 1.974 * | Soble = 0.341 | ||
---|---|---|---|
Variable | Ass (1) | lnPatent (2) | Efficiency (3) |
Dig | 5.221 *** | 6.266 ** | −0.842 |
(4.280) | (1.980) | (−0.600) | |
Ass | 0.378 ** | 0.0653 | |
(2.010) | (0.790) | ||
Lev | −0.175 | −0.691 * | −0.146 |
(−1.230) | (−1.970) | (−0.940) | |
Only1 | −0.00307 | −0.0146 *** | 0.00464 ** |
(−1.650) | (−3.170) | (2.280) | |
Ppe | 0.403 ** | −0.439 | −0.215 |
(2.260) | (−0.990) | (−1.100) | |
Sa | 0.112 | 0.235 | −0.343 *** |
(1.020) | (0.860) | (−2.840) | |
Lnsize | −0.0803 | −0.193 | 0.331 ** |
(−0.590) | (−0.580) | (2.240) | |
Time effect | YES | YES | YES |
Individual effect | YES | YES | YES |
_Cons | 1.913 | 4.380 | −5.668 ** |
(0.740) | (0.690) | (−2.030) | |
N | 186 | 186 | 186 |
F Statistics | p-Value | Threshold Value | |
---|---|---|---|
TH-1 | 12.91 | 0.087 | 0.086 * |
TH-2 | 3.13 | 0.687 | 0.5632 |
TH-3 | 11.05 | 0.233 | 0.5606 |
Efficiency | |
---|---|
Dig(ass ≤ 0.086) | 13.715 * |
(1.687) | |
Dig(0.086 < ass < 0.5632) | −0.579 |
(−1.580) | |
Dig(ass ≥ 0.5632) | −0.019 |
(−0.074) | |
Control | YES |
Time effect | YES |
_Cons | −8.858 |
(−0.760) | |
N | 135 |
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Liu, H.; Wang, P.; Li, Z. Is There Any Difference in the Impact of Digital Transformation on the Quantity and Efficiency of Enterprise Technological Innovation? Taking China’s Agricultural Listed Companies as an Example. Sustainability 2021, 13, 12972. https://doi.org/10.3390/su132312972
Liu H, Wang P, Li Z. Is There Any Difference in the Impact of Digital Transformation on the Quantity and Efficiency of Enterprise Technological Innovation? Taking China’s Agricultural Listed Companies as an Example. Sustainability. 2021; 13(23):12972. https://doi.org/10.3390/su132312972
Chicago/Turabian StyleLiu, Haihua, Peng Wang, and Zejun Li. 2021. "Is There Any Difference in the Impact of Digital Transformation on the Quantity and Efficiency of Enterprise Technological Innovation? Taking China’s Agricultural Listed Companies as an Example" Sustainability 13, no. 23: 12972. https://doi.org/10.3390/su132312972
APA StyleLiu, H., Wang, P., & Li, Z. (2021). Is There Any Difference in the Impact of Digital Transformation on the Quantity and Efficiency of Enterprise Technological Innovation? Taking China’s Agricultural Listed Companies as an Example. Sustainability, 13(23), 12972. https://doi.org/10.3390/su132312972