Text to Causal Knowledge Graph: A Framework to Synthesize Knowledge from Unstructured Business Texts into Causal Graphs

Author:

Gopalakrishnan Seethalakshmi1,Chen Victor Zitian2,Dou Wenwen1ORCID,Hahn-Powell Gus3ORCID,Nedunuri Sreekar1ORCID,Zadrozny Wlodek14ORCID

Affiliation:

1. Department of Computer Science, University of North Carolina at Charlotte, Charlotte, NC 28223, USA

2. Fidelity Investments, 100 New Millennium Way, Durham, NC 27709, USA

3. Department of Linguistics, University of Arizona, Tucson, AZ 85721, USA

4. School of Data Science, University of North Carolina at Charlotte, Charlotte, NC 28223, USA

Abstract

This article presents a state-of-the-art system to extract and synthesize causal statements from company reports into a directed causal graph. The extracted information is organized by its relevance to different stakeholder group benefits (customers, employees, investors, and the community/environment). The presented method of synthesizing extracted data into a knowledge graph comprises a framework that can be used for similar tasks in other domains, e.g., medical information. The current work addresses the problem of finding, organizing, and synthesizing a view of the cause-and-effect relationships based on textual data in order to inform and even prescribe the best actions that may affect target business outcomes related to the benefits for different stakeholders (customers, employees, investors, and the community/environment).

Funder

National Science Foundation

Publisher

MDPI AG

Subject

Information Systems

Reference44 articles.

1. IFAC, and International Federation of Accountants (2023, April 26). Regulatory Divergence: Costs, Risks and Impacts. Available online: https://www.ifac.org/knowledge-gateway/contributing-global-economy/publications/regulatory-divergence-costs-risks-and-impacts.

2. Corporate sustainability: First evidence on materiality;Khan;Account. Rev.,2016

3. Investor sentiment for corporate social performance;Naughton;Account. Rev.,2019

4. Materiality judgments in an integrated reporting setting: The effect of strategic relevance and strategy map;Green;Account. Organ. Soc.,2019

5. A survey on extraction of causal relations from natural language text;Yang;Knowl. Inf. Syst.,2022

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