A Knowledge Representation System for the Indian Stock Market

Author:

Bhuyan Bikram Pratim12ORCID,Jaiswal Vaishnavi2,Cherif Amar Ramdane1

Affiliation:

1. LISV Laboratory, University of Paris Saclay, 10-12 Avenue of Europe, 78140 Velizy, France

2. School of Computer Science, University of Petroleum and Energy Studies, Dehradun 248007, India

Abstract

Investors at well-known firms are increasingly becoming interested in stock forecasting as they seek more effective methods to predict market behavior using behavioral finance tools. Accordingly, studies aimed at predicting stock performance are gaining popularity in both academic and business circles. This research aims to develop a knowledge graph-based model for representing stock price movements using fundamental ratios of well-known corporations in India. The paper uses data from 15 ratios taken from the top 50 companies according to market capitalization in India. The data were processed, and different algorithms were used to extract tuples of knowledge from the data. Our technique involves guiding a domain expert through the process of building a knowledge graph. The scripts of the proposed knowledge representation and data could be found here: GitHub. The work can be integrated with a deep learning model for explainable forecasting of stock price.

Publisher

MDPI AG

Subject

Computer Networks and Communications,Human-Computer Interaction

Reference42 articles.

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