Forward Participation in GVCs and Its Impact on Export Quality of Forestry Products: Evidence from China
Abstract
:1. Introduction
2. Literature Review
3. Theoretical Analysis
4. Materials and Methods
4.1. Main Regression Model
4.2. Main Explanatory Variable
4.3. Measurement for Export Quality
4.4. Research Methods of Impact Channels
4.5. Data
5. Results
5.1. Main Regression Results
5.2. Results of the Channels
5.3. Discussion
6. Conclusions and Policy Implications
- Forward participation in GVCs significantly improves the quality of China’s forestry exports, as evidenced by the consistently positive and significant coefficients of GVCFP across various model specifications.
- Technological diffusion serves as a critical channel for this effect, with forward participation facilitating quality improvements by enabling Chinese forestry firms to access advanced technologies and production standards.
- The impact of forward participation on export quality is moderated by the technological level and value chain position of trading partners; higher technological levels amplify the positive effect, while mid-chain positions weaken the technology diffusion benefits.
- Forward GVC participation stands out as a novel, effective way to lift export quality in forestry, adding to the traditional approach of importing high-quality inputs via backward participation. Unlike sectors where backward participation typically enhances quality [38,53], forestry’s downstream-led structure aids technological spread through forward ties. For example, a Chinese firm sending pulp to a European furniture maker might adopt green methods to meet standards, enhancing export quality. This path highlights the value of global market ties at the export stage, especially in buyer-led sectors like forestry.
- Policymakers must carefully assess key firms’ value chain positions when using GVCs for quality enhancement. Data suggest that the diffusion of technology from forward participation varies by partner location, with mid-chain roles reducing benefits (Section 5.2). Developing nations should systematically analyze the technological proficiencies and value chain placements of their trading partners—whether proximate to primary inputs (e.g., R&D and raw materials) or final demand (e.g., branding and sales)—to ascertain whether forward or backward GVC participation is more conducive to technology diffusion. For example, partnering with entities at the downstream segment of the value chain, where consumer-oriented standards frequently demand advanced technologies, may optimize the advantages of forward participation [17].
- Fostering connections with tech-savvy firms in GVCs is vital for maximizing diffusion. Labor productivity’s moderating role (Section 5.2) shows advanced partners boost forward participation’s quality impact. Emerging economies should seek ties with such firms via joint ventures, tech transfers, or trade fairs to access modern methods and green practices. For instance, a Chinese forestry firm might team up with a German paper producer for energy-saving techniques, lifting quality and cutting environmental harm. Governments can assist with this through incentives like tax breaks or subsidies.
- While forward participation matters, backward participation remains the main quality driver in forestry, as seen in larger GVCBP coefficients (Section 5.1 and Section 5.2), aligning with the literature on input imports [53,59]. Importing top-grade logs from Canada, for example, directly boosts Chinese furniture quality. This study complements—not replaces—backward participation, urging policymakers to keep leveraging inputs while exploring forward potential, especially in downstream-influenced sectors like forestry.
- Beyond quality, forward GVC participation may support broader sustainability aims. Quality gains enhance competitiveness, profits, and innovation [1], enabling reinvestment in R&D and better processes. Meanwhile, technology diffusion suggests eco-benefits, like reduced energy use and emissions, advancing forestry sustainability. Developing nations should craft policies that blend economic goals (quality) with ecological aims (emissions cuts) for holistic progress.
- The reliance on data from the World Input–Output Database (WIOD) introduces limitations due to its time coverage, which ended in 2014, potentially affecting the timeliness of findings.
- The WIOD’s classification of forestry product processing categories is not sufficiently detailed, constraining the granularity of GVC analysis. Macro-level GVC studies depend on the time periods and industry classifications provided by input–output tables, thereby limiting the scope of investigation.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variable | Definition | Type |
---|---|---|
Export quality of China’s forestry products in industry to country at time | Dependent variable | |
Forward participation in GVCs: share of China’s exports used as intermediate goods in country c’s production for further export | Core explanatory variable | |
Backward participation in GVCs: share of imported intermediate inputs in China’s exports | Explanatory variable | |
Trading partner’s upstreamness: distance from final demand in country ’s production | Explanatory variable | |
Trading partner’s downstreamness: distance from primary inputs in country ’s production | Explanatory variable | |
GDP of trading partner country at time (market size) | Control variable | |
Per capita GDP of trading partner country at time (consumption level) | Control variable | |
Dummy variable: 1 if China has an FTA with country at time , 0 otherwise | Control variable | |
Rule of law index of country at time (legal enforcement) | Control variable | |
Regulatory quality index of country at time (quality regulation) | Control variable | |
Industry fixed effects | Fixed effect | |
Country fixed effects | Fixed effect | |
Time fixed effects | Fixed effect | |
Error term | Error term |
Variable | Description | Mean | SD | Min | Median | Max |
---|---|---|---|---|---|---|
quality ( = 3) | Export quality (KSW, = 3) | 0.029 | 0.037 | 0.000 | 0.021 | 0.575 |
GVCFP | Forward GVC participation | 0.233 | 0.142 | 0.000 | 0.223 | 0.768 |
GVCBP | Backward GVC participation | 0.138 | 0.035 | 0.053 | 0.138 | 0.193 |
upstream | Distance from final demand | 2.917 | 0.514 | 1.095 | 2.956 | 4.245 |
downstream | Distance from primary inputs | 2.301 | 0.434 | 1.000 | 2.415 | 3.203 |
PL (Value Added) | Labor productivity (Value Added, thousand USD) | 48 | 38 | 1 | 39 | 205 |
PL (Total Output) | Labor productivity (Total Output, thousand USD) | 144 | 130 | 1 | 108 | 872 |
gdp | Partner’s GDP (billion USD) | 1061 | 2281 | 4 | 338 | 17,390 |
gdpcap | Partner’s per capita GDP (USD) | 27,490 | 21,960 | 457 | 22,230 | 119,200 |
FTA | FTA dummy (1 = yes, 0 = no) | 0.016 | 0.127 | 0.000 | 0.000 | 1.000 |
RL | Rule of law index | 0.998 | 0.795 | −1.084 | 1.120 | 2.125 |
RQ | Regulatory quality index | 1.057 | 0.612 | −0.866 | 1.138 | 2.025 |
Country | Export Value (Billion USD) | Share (%) |
---|---|---|
United States | 38.829 | 19.56 |
Japan | 22.574 | 11.37 |
South Korea | 8.745 | 4.41 |
United Kingdom | 7.487 | 3.77 |
Canada | 6.968 | 3.51 |
Germany | 6.312 | 3.18 |
Australia | 5.056 | 2.55 |
France | 3.640 | 1.83 |
Netherlands | 3.427 | 1.73 |
Russia | 3.097 | 1.56 |
Variable | Quality ( = 3) | GVCFP | GVCBP | upstream | downstream |
---|---|---|---|---|---|
Quality (σ = 3) | 1.000 | ||||
GVCFP | 0.025 | 1.000 | |||
GVCBP | 0.086 * | 0.197 * | 1.000 | ||
upstream | −0.054 | 0.231 * | 0.053 | 1.000 | |
downstream | −0.085 * | 0.306 * | 0.594 * | 0.149 * | 1.000 |
Quality ( = 3) | Quality ( = 3) | Quality ( = 5) | Quality ( = 5) | |
---|---|---|---|---|
GVCFP | 0.411 *** | 0.395 *** | 0.561 *** | 0.537 *** |
(0.0852) | (0.0858) | (0.0909) | (0.0920) | |
GVCBP | 0.0225 ** | 0.0201 ** | 0.0207 ** | 0.0194 * |
(0.00923) | (0.00952) | (0.00984) | (0.0102) | |
upstream | −0.0150 *** | −0.0170 *** | −0.0107 *** | −0.0121 *** |
(0.00309) | (0.00317) | (0.00329) | (0.00340) | |
downstream | −0.0283 *** | −0.0302 *** | −0.0326 *** | −0.0344 *** |
(0.00428) | (0.00436) | (0.00456) | (0.00467) | |
lngdp | −0.0664 * | −0.0263 | ||
(0.0346) | (0.0371) | |||
lngdpcap | 0.0182 | 0.0021 | ||
(0.0331) | (0.0355) | |||
RL | 0.00561 | 0.000713 | ||
(0.0114) | (0.0122) | |||
RQ | 0.00171 | 0.00241 | ||
(0.00926) | (0.00992) | |||
FTA | −0.0210 | −0.0251 | ||
(0.0185) | (0.0198) | |||
Constant | 0.740 *** | 2.003 *** | 0.620 *** | 1.156 * |
(0.0178) | (0.591) | (0.0190) | (0.634) | |
Observations | 1845 | 1845 | 1845 | 1845 |
R-squared | 0.734 | 0.847 | 0.711 | 0.821 |
Industry FE | YES | YES | YES | YES |
Country FE | YES | YES | YES | YES |
Year FE | YES | YES | YES | YES |
Quality ( = 3) | Quality ( = 3) | Quality ( = 3) | |
---|---|---|---|
GVCFP | 0.0126 * | 0.00400 * | 0.237 *** |
(0.0125) | (0.0107) | (0.0480) | |
GVCFP × PL (Value Added) | 0.000167 *** | ||
(0.000162) | |||
GVCFP × PL (Total Output) | 0.000148 *** | ||
(4.30 × 10−05) | |||
GVCFP × downstream | −0.0471 *** | ||
(0.0138) | |||
GVCFP × upstream | −0.0369 *** | ||
(0.0107) | |||
GVCBP | 0.394 *** | 0.410 *** | 0.392 *** |
(0.0859) | (0.0857) | (0.0876) | |
upstream | −0.0174 *** | −0.0170 *** | |
(0.00321) | (0.00318) | ||
downstream | −0.0307 *** | −0.0332 *** | |
(0.00442) | (0.00441) | ||
lngdp | −0.0667 * | −0.0627 * | −0.0474 |
(0.0345) | (0.0344) | (0.0352) | |
lngdpcap | 0.0203 | 0.0190 | 0.00540 |
(0.0331) | (0.0329) | (0.0337) | |
RL | 0.00551 | 0.00413 | 0.00916 |
(0.0114) | (0.0114) | (0.0116) | |
RQ | 0.000797 | 0.00118 | 0.000296 |
(0.00925) | (0.00922) | (0.00942) | |
FTA | −0.0211 | −0.0215 | −0.0156 |
(0.0185) | (0.0184) | (0.0188) | |
Constant | 2.005 *** | 1.931 *** | 1.548 ** |
(0.590) | (0.588) | (0.601) | |
Observations | 1845 | 1845 | 1845 |
R-squared | 0.849 | 0.854 | 0.818 |
Industry FE | YES | YES | YES |
Country FE | YES | YES | YES |
Year FE | YES | YES | YES |
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Zhu, S.; Liu, J.; Niu, N. Forward Participation in GVCs and Its Impact on Export Quality of Forestry Products: Evidence from China. Forests 2025, 16, 765. https://doi.org/10.3390/f16050765
Zhu S, Liu J, Niu N. Forward Participation in GVCs and Its Impact on Export Quality of Forestry Products: Evidence from China. Forests. 2025; 16(5):765. https://doi.org/10.3390/f16050765
Chicago/Turabian StyleZhu, Shuning, Jinlong Liu, and Niu Niu. 2025. "Forward Participation in GVCs and Its Impact on Export Quality of Forestry Products: Evidence from China" Forests 16, no. 5: 765. https://doi.org/10.3390/f16050765
APA StyleZhu, S., Liu, J., & Niu, N. (2025). Forward Participation in GVCs and Its Impact on Export Quality of Forestry Products: Evidence from China. Forests, 16(5), 765. https://doi.org/10.3390/f16050765