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Text-Based Measure of Supply Chain Risk Exposure

94
Citations
July 1, 2024
Published Date

Research Abstract & Technology Focus

Using textual analysis techniques, including seeded word embedding and bag-of-words-based content analysis, I develop a firm-level measure of supply chain risk exposure from a novel source of unstructured data—the discussion between managers and equity analysts on supply chain-related topics during firms’ quarterly earnings conference calls. I validate the measure by showing that (1) the measure exhibits intuitive variations over time and across firms, successfully capturing both routine and systematic supply chain risk events; and (2) the measure is about risk exposure, as it significantly correlates with realized and options-implied stock return volatility, even after controlling for well-known aggregate risk measures. I then demonstrate that the measure is specifically indicative of the supply chain component of risk exposure. (3) Consistent with theoretical predictions, firms facing higher supply chain risks have higher inventory buffers, particularly in raw materials and intermediate inputs, increased cash holdings in lieu of investments, and significantly lower trade credit received from suppliers. Moreover, (4) during unexpected risk episodes, such as the Tohoku earthquake, firms with higher ex ante risk exposure have worse operating and financial performance. These results indicate that the text-based measure provides a credible quantification of firm-level exposure to supply chain risks and can thus be reliably utilized as outcome or explanatory variables in empirical supply chain research. This paper was accepted by Jeannette Song, operations management. Supplemental Material: The data files and online appendix are available at https://doi.org/10.1287/mnsc.2023.4927 .
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What is the core focus of the research titled 'Text-Based Measure of Supply Chain Risk Exposure'?

This literature focuses on: Using textual analysis techniques, including seeded word embedding and bag-of-words-based content analysis, I develop a firm-level measure of supply chain risk exposure from a novel source of unstructured data—the discussion between managers and e...

Are there open-source GitHub repositories related to Text-Based Measure of Supply Chain Risk Exposure?

Yes, open-source projects like perplexityai/bumblebee (Read-only developer endpoint scanner for on-disk package, extension, and developer-tool metadata, built to check exposure to known software supply-...) are actively building upon these concepts.

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Products like The New Waydev are bringing this to market. Their focus is: Measure the full AI SDLC. From token to production..

Are there commercial applications of 'Text-Based Measure of Supply Chain Risk Exposure' in market news publications?

Yes, highly correlated activity was mapped. An entry titled 'A two-stage deep learning model for risk identification in green supply chain finance' discusses this: Scientific Reports - A two-stage deep learning model for risk identification in green supply chain finance

What other academic literature is closely related to 'Text-Based Measure of Supply Chain Risk Exposure'?

Yes, highly correlated activity was mapped. An entry titled 'A Study on Demand Analysis and Forecasting and its Impact on Inventory Management in Supply Chain Logistics' discusses this: Modern supply chains operate within an increasingly globalized and unpredictable marketplace where the margin for error is razor-thin. Demand Analy...

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