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Supervised Machine Learning Method for Ontology-based Financial Decisions in the Stock Market

Published: 09 May 2023 Publication History

Abstract

For changing semantics, ontological and information presentation, as well as computational linguistics for Asian social networks, are one of the most essential platforms for offering enhanced and real-time data mapping, as well as huge data access across diverse big data sources on the web architecture, information extraction mining, statistical modeling and data modeling, database control, and so on. The concept of opinion or sentiment analysis is often used to predict or classify the textual data, sentiment, affect, subjectivity, and other emotional states in online text. Recognizing the message's positive and negative thoughts or opinions by examining the author's goals will aid in a better understanding of the text's content in terms of the stock market. An intelligent ontology and knowledge Asian social network solution can improve the effectiveness of a company's decision making support procedures by deriving important information about users from a wide variety of web sources. However, ontology is concerned primarily with problem-solving knowledge discovery. The utilization of Internet-based modernizations welcomed a significant effect on the Indian stock exchange. News related to the stock market in the most recent decade plays a vital role for the brokers or users. This article focuses on predicting stock market news sentiments based on their polarity and textual information using the concept of ontological knowledge-based Convolution Neural Network (CNN) as a machine learning approach. Optimal features are essential for the sentiment classification model to predict the stock's textual reviews' exact sentiment. Therefore, the swarm-based Artificial Bee Colony (ABC) algorithm is utilized with the Lexicon feature extraction approach using a novel fitness function. The main motivation for combining ABC and CNN is to accelerate model training, which is why the suggested approach is effective in predicting emotions from stock news.

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Published In

cover image ACM Transactions on Asian and Low-Resource Language Information Processing
ACM Transactions on Asian and Low-Resource Language Information Processing  Volume 22, Issue 5
May 2023
653 pages
ISSN:2375-4699
EISSN:2375-4702
DOI:10.1145/3596451
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Association for Computing Machinery

New York, NY, United States

Publication History

Published: 09 May 2023
Online AM: 05 November 2022
Accepted: 24 June 2022
Revised: 18 June 2022
Received: 16 February 2022
Published in TALLIP Volume 22, Issue 5

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Author Tags

  1. Stock market
  2. opinion mining
  3. sentiment analysis
  4. Lexicon feature extraction
  5. Artificial Bee Colony Algorithm (ABC)
  6. Convolution Neural Networks (CNN)

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