1. Introduction
Global supply chains are undergoing a period of deep restructuring driven by pandemic disruptions, geopolitical shifts, extreme weather, and commodity price volatility. Recent studies have reported that supply chain shocks have persistent effects on firm performance and propagate across connected partners [
1,
2,
3]. Against this backdrop, managing supply chain risk has become central to corporate strategy. At the same time, firms’ innovation capabilities and how they communicate them to outsiders have become increasingly important for market expectations and investment decisions [
4,
5,
6]. Innovation disclosure, then, is no longer simply a matter of regulatory compliance; it has become a tool firms use to signal quality and build relationships with external stakeholders.
Despite this progress, we know little about whether and how innovation disclosure matters for supply chain risk. Information frictions are a well-recognized source of inefficiency in supply chains [
7,
8], but existing work on innovation disclosure concentrates on capital markets [
4,
9] and bank lending [
5]. There are good reasons to think the supply chain setting is different. Financial metrics are backward-looking and largely standardized; ESG disclosures primarily address compliance and reputational concerns. Innovation information, by contrast, is forward-looking. It reflects a firm’s technological trajectory and R&D commitments, which are precisely what supply chain partners need to assess when evaluating technical compatibility and the long-term value of cooperation. Because this information cannot be readily inferred from financial statements or third-party ratings, voluntary disclosure through MD&A sections may be an unusually important channel for reducing information asymmetry between supply chain partners. Yet the mechanisms through which such disclosure shapes supply chain risk have received almost no attention.
Our paper connects to several lines of prior work. A growing body of literature examines the economic consequences of innovation disclosure, mostly in capital market and lending settings. Brown and Martinsson [
9] analyze the link between transparency and innovation, Huang et al. [
4] show that innovative firms increase management guidance to meet investor demands, and He and Lee [
10] document how post-innovation disclosure choices affect the cost of capital. On the financing side, Saidi and Žaldokas [
5] exploit the American Inventors Protection Act and find that innovation disclosure helps firms switch lenders, lower debt costs, and access syndicated and public capital markets, while Francis et al. [
11] confirm that innovation information matters for bank valuations. Other work examines broader economic effects: Zhou et al. [
12] show that innovation disclosure facilitates access to R&D subsidies, and Kim and Valentine [
13] reveal the complex consequences of mandatory patent disclosure for innovation activity. What these authors have not done is look beyond capital markets and lending relationships to ask whether innovation disclosure also matters for supply chain risk. A second line of work studies how information flows through supply chains and shapes firm behavior. Cho et al. [
14] find that information externalities from major customers’ earnings announcements affect suppliers’ voluntary disclosure, and Cai et al. [
15] study the determinants and value relevance of voluntary supply chain disclosure. Zhong et al. [
16] show that supply chain transparency reduces stock price crash risk; Zheng et al. [
17] document its effect on idiosyncratic risk for newly listed firms, with digitalization playing a moderating role. In a comprehensive review, Ho et al. [
18] identify information sharing and transparency as critical components of effective supply chain risk management. The information studied in this part of the literature, however, is predominantly financial or ESG-related. Innovation disclosure as a distinct category has received little attention. Third, a subset of studies on disclosure spillovers examine how one firm’s disclosure decisions affect others. Seo [
19] document significant peer effects, Durnev and Mangen [
20] show that peers’ MD&A content influences investment decisions, and Liu et al. [
21] find that peers’ innovation-related MD&A content stimulates R&D spending. In the vertical dimension, Song et al. [
22] show that downstream customers’ environmental disclosures influence upstream suppliers’ emissions. Most of this body of work, however, focuses on horizontal spillovers within industries. Vertical spillovers of innovation information between supply chain partners, and the associated risk contagion, remain largely unexamined. Our paper also speaks to a broader research focus on risk propagation through interconnected economic networks. Recent work in financial markets has shown that risk spillovers exhibit strong frequency heterogeneity and asymmetric amplification under market stress [
23,
24]. This existing research documents how price-level shocks propagate across listed firms and across commodity markets, while we shift the object of analysis from market-level price connectedness to firm-level supply chain relationships and examine how information disclosure, rather than realized shocks, shapes the transmission of risk between connected firms.
In this study, we ask whether and how innovation information disclosure affects firms’ supply chain risk. We construct firm-level measures of both innovation disclosure and supply chain risk from the MD&A sections of annual reports for Chinese A-share listed firms over 2012 to 2023, using textual analysis methods. Our main finding is that firms with greater innovation disclosure face a lower supply chain risk. The result is robust to instrumental variable estimation, propensity score matching, entropy balancing, and the inclusion of province × year and industry × year fixed effects. Our mechanism tests provide supportive evidence for three pathways: greater innovation disclosure is associated with increasingly diverse supply chain partners, with more joint patenting with those partners and with stronger reputation and commercial credit capacity. The effect is concentrated among non-SOEs, high-tech firms, firms in competitive industries, and firms outside the digital economy. Finally, we document that innovation disclosure spills over asymmetrically along the supply chain: downstream customers’ disclosure prompts upstream suppliers to become more transparent, but the reverse does not hold. Supply chain risk, by contrast, is transmitted between connected firms in both directions.
Our study makes four contributions. First, prior work on the economic consequences of innovation disclosure focuses on capital markets and bank lending [
4,
5,
13]. Our contribution is not simply to extend this line of research to a new setting but to show that innovation disclosure plays a distinctive role in shaping supply chain relationships that other disclosure types do not. Because innovation information is forward-looking and capability-oriented, rather than backward-looking like financial disclosure or compliance-oriented like ESG disclosure, it speaks directly to the technical-coordination and partner-selection decisions that define supply chain cooperation. Our analysis points to three channels consistent with this role: partner diversification, collaborative innovation, and reputation building. This responds to Roychowdhury et al. [
25]’s call for research on how financial reporting shapes real economic decisions. Second, the existing literature on disclosure spillovers largely addresses horizontal effects within industries [
19,
20,
21]. We provide evidence of vertical spillovers along supply chains. Downstream customers’ disclosure drives upstream suppliers to become more transparent, while supply chain risk spreads in both directions but with asymmetric intensity. These findings offer a richer picture of how information propagates through supply chain networks. Third, the supply chain risk literature has focused on operational factors like supplier concentration and financial factors like leverage [
18], with little attention to the role of information. We show that a firm’s information environment, specifically its innovation disclosure, is a meaningful determinant of supply chain risk in its own right. Fourth, our results have practical relevance. They suggest that firms can use innovation disclosure not only to improve capital market relationships but also to strengthen supply chain resilience and that regulators designing disclosure requirements should take these supply chain effects into account.
The rest of the paper is organized as follows.
Section 2 develops the hypotheses.
Section 3 describes variable construction and the empirical strategy.
Section 4 presents the results.
Section 5 presents the conclusions.
4. Empirical Results
4.1. Baseline Estimates
Table 2 reports the baseline results. Column (1) includes only
IID, along with firm and year fixed effects; the coefficient is
, which is significant at the 1% level. When we add the full set of controls in column (2), the coefficient barely moves, changing to
, which suggests that the result is not picking up observable firm characteristics. In economic terms, a one-standard-deviation increase in innovation disclosure (0.047) corresponds to a reduction in supply chain risk of about 3.4% of the sample mean. The control variables carry the expected signs. Return on assets (
ROA) is significantly negative, indicating that more profitable firms have greater resources to absorb supply chain fluctuations and thus face lower risk exposure. Gross profit margin (
GPM) is also significantly negative, consistent with stronger cost management capacity buffering price volatility along the supply chain. State ownership (
SOE) is significantly negative, suggesting that state-owned enterprises benefit from policy support and resource advantages that reduce supply chain risk. Ownership concentration (
OCR) is marginally positive, potentially reflecting decision-making rigidity associated with concentrated ownership structures that may hinder flexible supply chain risk management. The debt-to-asset ratio (
DAR) and liquidity ratio (
LR) are both significantly negative, indicating that firms with moderate leverage and higher liquidity face lower supply chain risk. These results provide initial support for Hypothesis 1.
4.2. Addressing Endogeneity
The baseline results are consistent with Hypothesis 1, but the relationship between innovation disclosure and supply chain risk could be driven by reverse causality (firms facing higher supply chain risk may adjust their disclosure behavior) or by omitted time-varying factors that affect both disclosure and risk simultaneously. We address these concerns in several ways.
Table 3 reports the results. We begin with instrumental variable estimation using two different instruments. The first (
IV1) is investor inquiry frequency on the listed firms’ online interactive platforms. The logic is that investor attention creates pressure for firms to disclose more (satisfying the relevance condition), while individual investors do not participate in supply chain management decisions (satisfying the exclusion restriction). The second (
IV2) follows Lewbel [
40]’s heteroskedasticity-based approach and uses the cubic deviation of
IID from its industry mean as an instrument. Both instruments produce first-stage F-statistics well above conventional thresholds, and the second-stage coefficients on
IID are negative and significant in all specifications (columns 1–4), supporting a causal interpretation of the baseline results. We also use propensity score matching and entropy balancing to deal with potential selection bias. Within each industry–year group, we classify firms in the top 30% of innovation disclosure as the treatment group and those in the bottom 30% as the control group. Both approaches produce significant negative treatment effects of approximately
(columns 5–6), in line with the baseline estimates. As a final check, columns (7) and (8) replace the baseline year fixed effects with province × year and industry × year fixed effects, which absorb any differential time trends across regions and sectors. The coefficient on
IID remains significant at the 1% level and is very close to the baseline estimate, indicating that the results are not driven by location- or industry-specific trends.
4.3. Robustness Checks
We probe the robustness of the baseline result along four dimensions: how we measure the key variables, how we measure supply chain risk itself, how we handle the standard errors, and which firms are in the sample.
Table 4 reports the results. Column (1) replaces the ratio-based innovation disclosure measure with the natural logarithm of the innovation keyword count plus one (
lnIID), which helps address potential measurement error in the baseline specification. The coefficient remains significantly negative. Column (2) addresses a potential common-source concern, namely that both
IID and
SCR are constructed from the same MD&A text and could in principle be jointly driven by firm-specific narrative style (e.g., verbosity or optimism). To rule out this mechanical channel, we construct a non-textual measure of supply chain risk based on realized fluctuations in supplier and customer relationships. Following the idea that supply chain instability manifests in changing partner shares over time, we define supply chain volatility (
SCV) as the year-over-year change in the sum of top-five supplier and customer share ratios, adjusted by the total shares in the current year. Specifically,
SCV captures the absolute change in the top-five supplier (customer) purchase (sales) shares between year
and
t, scaled by the current-year total; higher values indicate greater instability in supply chain relationships. Column (2) re-runs the baseline specification with
SCV as the dependent variable. The coefficient on
IID is
, significant at the 1% level, which confirms that innovation disclosure reduces supply chain instability measured outside the MD&A text. Column (3) clusters standard errors at both the firm and year level instead of at the firm level alone. The point estimate on
IID is unchanged and remains significant at the 1% level, so the results do not depend on how we treat the error structure. We then check whether the results are sensitive to sample composition. Column (4) drops the COVID-19 years (2020–2021), since pandemic-related disruptions could be driving the baseline relationship. The coefficient decreases somewhat in magnitude but remains significant at the 1% level. Column (5) removes high-tech firms to verify that the effect is not confined to technology-intensive sectors; the coefficient remains significantly negative. Column (6) excludes firms with poor disclosure quality ratings (C or D), which could introduce noise into our text-based measures if the MD&A content is thin or boilerplate. The results are again very similar to the baseline. The core finding holds across all of these checks: firms that disclose more about their innovation activities face lower supply chain risk.
4.4. Mechanism Tests
We now examine three potential channels through which the baseline relationship may operate. As described in
Section 2, we consider three mechanisms: network diversification, collaborative innovation, and reputation and commercial credit.
Table 5 reports the results.
4.4.1. Network Diversification
Firms that depend on a small number of supply chain partners are vulnerable to severe disruption if any one of them encounters difficulties [
31,
35]. Conditional on the conventional search and due-diligence process through which firms identify potential partners, innovation disclosure can help broaden the partner base at the margin by providing additional forward-looking information that prospective partners can use when evaluating cooperation opportunities. We test this in two dimensions. Column (1) regresses supply chain dispersion (
SC_Disp, defined as the inverse of top-five supplier and customer concentration) on
IID. The coefficient is positive and significant at the 5% level, indicating that firms with more innovation disclosure have less concentrated supply chains. Column (2) uses ownership diversity (
Partner_Div, the number of distinct ownership types among top-five partners) as the dependent variable and finds a similar positive association. Together, these results are consistent with innovation disclosure being associated with more diversified supply chain networks in both the number and composition of partners, in line with Hypotheses 2 and 3.
4.4.2. Joint Patenting Evidence
Meaningful technological cooperation between supply chain partners requires that each side understands the other’s capabilities and R&D direction well enough to identify productive areas of joint work. Innovation disclosure provides this informational foundation. When firms and their partners move from arm’s-length transactions to joint R&D, shared intellectual property, and co-developed technology, both sides accumulate relationship-specific assets and face higher switching costs, which stabilizes the partnership [
21]. Columns (3) and (4) test this channel using joint patent applications as a proxy for collaborative innovation.
IID is significantly positively associated with both joint invention patents (
uni_inv) and joint utility model patents (
uni_uti). The effect is considerably larger for invention patents, which is intuitive: invention patents involve greater technical complexity, making external collaboration and the information that facilitates it more valuable. Joint patenting is a conservative proxy for collaborative innovation. Actual technology-based cooperation extends to joint R&D projects, technology licensing, shared testing platforms, and other activities that we do not observe. To the extent that innovation disclosure is also associated with these unmeasured forms of collaboration, our estimates likely understate the relationship. These results are consistent with Hypothesis 4.
4.4.3. Reputation and Trade Credit
The third channel works through reputation and commercial credit, which stabilize supply chain relationships in different but complementary ways. Innovation disclosure helps build a firm’s reputation by signaling innovation capability, which lowers counterparties’ perceived risk and provides a buffer when the firm faces temporary difficulties. It also signals favorable growth prospects to external financiers, enabling firms to strengthen their financial position and offer supply chain partners more flexible payment terms, creating financial ties that align economic interests on both sides. Column (5) shows that IID is significantly positively associated with commercial credit provision (TC), and column (6) shows a significant positive association with corporate reputation (Reputation). These findings are consistent with Hypotheses 5 and 6.
4.4.4. Ruling out a Generic Communication Interpretation
A natural concern about the mechanism results above is whether they reflect the specific informational content of innovation disclosure or merely a firm’s general disposition to communicate with external stakeholders. Several features of our design and findings argue against a generic-communication interpretation. The firm fixed effects in our specifications absorb time-invariant communication style at the firm level, including managerial preferences for openness and persistent investor-relations practices, while the instrumental variable strategies in
Section 4.2 isolate variation in
IID that comes from external sources rather than from unobserved firm-level communication propensity. More substantively, the joint-patenting result in
Section 4.4.2 requires the kind of content-specific information that innovation disclosure conveys, and the fact that the effect is substantially larger for joint invention patents than for joint utility model patents (invention patents demand more specific technological coordination) points to a content-based rather than a communication-volume mechanism. The heterogeneity patterns in
Section 4.5 reinforce the same conclusion: the effect is concentrated precisely in settings where information asymmetry about innovation is severe and where alternative content channels are limited. Together, these features make a content-based interpretation more plausible than a generic-communication one.
4.5. Heterogeneous Effects
We next ask whether the baseline effect varies across firm and industry characteristics.
Table 6 reports subsample results along four dimensions.
Columns (1) and (2) split the sample by ownership. The coefficient on IID is significant for non-state-owned enterprises but not for state-owned enterprises. This is not surprising. State-owned firms benefit from implicit government backing and policy support that stabilize supply chain relationships regardless of what the firm discloses about its innovation activities. Non-state-owned firms lack this backstop and depend more on market-based signals to build trust with partners, so innovation disclosure carries more weight.
Columns (3) and (4) split by technology intensity. The effect is significant for high-tech firms but insignificant for non-high-tech firms. In technology-intensive industries, supply chain partners care a great deal about a firm’s technological capabilities and R&D trajectory, so innovation disclosure has high informational content and is directly relevant to partnership decisions. In non-high-tech sectors, supply chain relationships are shaped more by traditional factors like price, production capacity, and delivery reliability, and innovation information matters less at the margin.
Columns (5) and (6) split by industry competition. The effect shows up in competitive industries but not in less competitive ones. When partners have many outside options, supply chain relationships are inherently more fragile, and innovation disclosure becomes more valuable as a way to differentiate the firm and retain partners. In concentrated industries, lower substitutability creates natural stickiness in relationships, so the marginal contribution of disclosure is smaller.
Columns (7) and (8) are split by digital economy classification. The effect is significant in non-digital-economy industries but insignificant in digital-economy industries. This might seem counterintuitive, but it makes sense once we consider the information environment. Firms in digital sectors already operate with rich information infrastructure, data-sharing platforms, and real-time digital channels that reduce information asymmetry between supply chain partners. The marginal value of formal disclosure through annual reports is therefore lower. In traditional industries, supply chain partners have fewer alternative ways to learn about a firm’s innovation capabilities, and formal disclosure through MD&A sections plays a correspondingly larger role.
A common thread runs through all four sets of results. The effect of innovation disclosure on supply chain risk is largest in settings where information asymmetry between supply chain partners is most severe and where alternative channels for communicating innovation capabilities are most limited.
4.6. Spillover and Risk Contagion Effects
Firms linked through supply chains do not operate in isolation: one firm’s disclosure behavior and risk exposure may spill over to its partners. The baseline and mechanism results above establish how innovation disclosure shapes a firm’s own supply chain risk; this subsection asks whether the same information dynamics also operate at the network level by propagating between connected firms. Prior work has documented information spillovers along supply chains [
41], but most of this research looks at horizontal effects within industries [
20,
21]. Here, we examine whether innovation disclosure and supply chain risk propagate vertically between suppliers and customers. We use supplier–customer matched data from the CNRDS database to test how one firm’s innovation disclosure or supply chain risk affects its counterpart.
Table 7 reports the results. Columns (1) and (2) look at how upstream suppliers’ disclosure and risk affect downstream customers; columns (3) and (4) look at the reverse direction.
4.6.1. Vertical Spillovers in Innovation Disclosure
We first ask whether innovation disclosure spills over between suppliers and customers, and if so, in which direction. Column (1) regresses customers’ innovation disclosure (IIDC) on their suppliers’ disclosure (IID). The coefficient is insignificant: suppliers’ disclosure does not appear to change customers’ transparency. Column (3) tests the other direction, regressing suppliers’ disclosure (IIDS) on their customers’ disclosure. Here the coefficient is positive and significant at the 1% level. Downstream customers’ innovation disclosure does appear to push upstream suppliers toward greater transparency. The spillover, then, runs in one direction only: from downstream to upstream. This is consistent with the typical power structure of supply chain relationships. Downstream customers usually hold stronger bargaining power and more control over partner selection, which gives their behavior an outsized influence on suppliers. When a customer raises its own disclosure standards, suppliers face pressure to follow suit, particularly if transparency becomes part of how the customer evaluates and selects its suppliers. Suppliers, by contrast, are generally in a weaker position and have less leverage over their customers’ disclosure choices.
4.6.2. Bidirectional Risk Contagion
We then ask whether supply chain risk itself is contagious between connected firms. Column (2) shows that suppliers’ supply chain risk (SCR) significantly increases their customers’ risk (SCRC), and column (4) shows that the reverse also holds: customers’ risk significantly increases their suppliers’ risk (SCRS). Risk, unlike disclosure, travels in both directions. The downstream-to-upstream effect is noticeably larger, however, which makes intuitive sense. Suppliers are directly exposed to fluctuations in customer demand; when a customer’s orders shrink or become uncertain, the supplier’s revenue and cash flows are immediately affected, and there may be limited scope for finding replacement demand quickly. Customers facing upstream risk have more room to maneuver, since they can often switch to alternative suppliers.
Putting the disclosure spillover and risk contagion results together, a clear pattern emerges. Innovation disclosure flows from downstream to upstream, while supply chain risk spreads in both directions. This means that improving innovation transparency at key downstream nodes can have a multiplier effect: it directly reduces the disclosing firm’s own supply chain risk, and it also encourages upstream suppliers to become more transparent, which further strengthens resilience across the network.
5. Conclusions
This paper asks whether innovation information disclosure affects firms’ supply chain risk. Using data on Chinese A-share listed firms from 2012 to 2023, we find that it does: firms that disclose more about their innovation activities in their MD&A sections face a significantly lower supply chain risk. This result holds up under instrumental variable estimation, propensity score matching, entropy balancing, alternative variable definitions, alternative clustering, and the inclusion of province- and industry-specific time trend controls.
The results are consistent with the three channels proposed. Firms with more innovation disclosure have broader and more diversified supply chain networks, a pattern consistent with disclosure lowering the search costs faced by prospective partners and attracting a more diverse set of suppliers and customers. They also engage in more collaborative innovation with supply chain partners, consistent with disclosure providing an informational foundation for joint patenting and deeper technological cooperation, which would strengthen relationship specificity and raise switching costs. And they exhibit stronger reputation and commercial credit capacity, consistent with partnerships being reinforced through trust on one side and financial ties on the other. The effect is concentrated among non-SOEs, high-tech firms, firms in competitive industries, and firms outside the digital economy, consistent with innovation disclosure being most effective where information asymmetry between supply chain partners is more severe. Moving from the firm level to the network level, we find that disclosure and risk propagate differently through supply chain networks. Disclosure spills over asymmetrically: downstream customers’ disclosure prompts upstream suppliers to become more transparent, but the reverse does not hold. Supply chain risk, by contrast, is contagious in both directions, with stronger transmission from downstream to upstream.
Because our empirical setting is Chinese A-share listed firms, it is worth clarifying which of our findings are likely to travel to other contexts and which may be more context-specific. The core logic of our argument, that innovation disclosure reduces information asymmetry and thereby supports partner selection, coordination, and stability in supply chain relationships, rests on signaling theory and should apply wherever supply chains operate under information asymmetry. Our heterogeneity results offer a tentative internal benchmark, although they cannot substitute for cross-country evidence. The effect is concentrated among non-state-owned firms, in competitive industries, and outside the digital economy; that is, in subsamples that most closely resemble market-driven environments with limited alternative information channels. Whether the same patterns hold in other institutional and linguistic settings is an empirical question that internal heterogeneity alone cannot settle, and we view comparative replication in non-Chinese economies as an important direction for future research. At the same time, we acknowledge that institutional factors such as state ownership, the specific form of disclosure regulation, and the influence of industrial policy are likely to shape the magnitude of the effect and the relative salience of particular channels. For instance, the attenuation of the effect among state-owned enterprises is plausibly tied to implicit policy support that substitutes for market-based signaling, and the relative intensity of the asymmetric vertical spillover may reflect buyer–supplier power dynamics that vary across institutional settings.
Our results have four practical implications. First, firms should treat innovation disclosure as part of their supply chain management strategy and not just heir investor relations efforts. Our results show that transparent innovation disclosure reduces supply chain risk through network diversification, collaborative innovation, and stronger reputation and credit capacity. Firms would benefit from establishing systematic mechanisms to communicate technological progress, R&D plans, and intellectual property through formal channels such as MD&A sections. This is particularly relevant for non-state-owned and high-tech firms, where the risk-reducing effect of disclosure is most pronounced. In practice, coordinating disclosure efforts across supply chain management and investor relations functions allows firms to serve both capital market communication and supply chain relationship objectives at the same time.
Second, regulators should strengthen institutional arrangements for innovation disclosure, taking advantage of the multiplier effects we document at key supply chain nodes. Our finding that downstream customers’ disclosure incentivizes upstream suppliers to become more transparent suggests that promoting disclosure by influential firms can improve the information environment across the entire network. One way to do this is to enhance MD&A disclosure guidelines with more structured requirements for innovation-related content, covering R&D investments, technological breakthroughs, patent portfolios, and innovation partnerships. Incentive mechanisms such as disclosure ratings and best-practice recognition can amplify the demonstration effects of core firms.
Third, policymakers should recognize the systemic nature of supply chain risk and promote collaborative risk management across firm boundaries. Our evidence of bidirectional risk contagion, with stronger transmission from downstream to upstream, implies that individual firms’ risk management efforts alone are not sufficient. Governments and industry associations can facilitate this by building supply chain risk information-sharing platforms that enable coordinated early warning, risk assessment, and emergency response among connected firms.
Fourth, collaborative innovation should be used as a binding mechanism for supply chain stability. Our finding that innovation disclosure promotes joint patenting, which in turn strengthens relationship specificity and raises switching costs, suggests that firms should incorporate technological compatibility and collaborative innovation potential into their partner selection criteria. At the policy level, governments can lower barriers to supply chain collaborative innovation through dedicated funds, fee reductions for joint patent applications, and tax incentives, all of which would help strengthen stability and resilience across the industrial chain.