News analytics to predict Malaysian telco stock price performance: data visualization

The stock market refers to the collection of markets and exchanges where regular activities of buying, selling and issuance of shares of publicly held companies take place. Stock Market Index is the reading used in comparing the price of the stock market each day and it is very dynamic and susceptib...

Full description

Bibliographic Details
Main Authors: Nor, Rozi Nor Haizan, Ismarau Tajuddin, Nur Ilyana, Mahathir, Muhammad Akmal, Jusoh, Yusmadi Yah, Aziz, Khairi Azhar
Format: Conference or Workshop Item
Published: IEEE 2023
_version_ 1825949071243739136
author Nor, Rozi Nor Haizan
Ismarau Tajuddin, Nur Ilyana
Mahathir, Muhammad Akmal
Jusoh, Yusmadi Yah
Aziz, Khairi Azhar
author_facet Nor, Rozi Nor Haizan
Ismarau Tajuddin, Nur Ilyana
Mahathir, Muhammad Akmal
Jusoh, Yusmadi Yah
Aziz, Khairi Azhar
author_sort Nor, Rozi Nor Haizan
collection UPM
description The stock market refers to the collection of markets and exchanges where regular activities of buying, selling and issuance of shares of publicly held companies take place. Stock Market Index is the reading used in comparing the price of the stock market each day and it is very dynamic and susceptible to quick changes therefore a large dataset is needed to create a proper prediction model. Many believe that it follows a random walk pattern. In this project, machine learning is used so that a prediction can be made by monitoring past index patterns and predicting how they would behave in the future. Natural Language Processing is a scoring process of a word in a sentence that translates the word meaning into machine-readable value. With this, we can identify a certain topic of a stock market to be either positive or negative. Knowing these values, we can train the machine learning model to predict the price index trend and see whether news and posts related to stock price affect the market. The result of the prediction is visualized and analyzed to identify the accuracy of the data and view the disparity between the predictions and the actual value.
first_indexed 2024-03-06T08:38:55Z
format Conference or Workshop Item
id upm.eprints-37631
institution Universiti Putra Malaysia
last_indexed 2024-03-06T08:38:55Z
publishDate 2023
publisher IEEE
record_format dspace
spelling upm.eprints-376312023-09-28T05:16:04Z http://psasir.upm.edu.my/id/eprint/37631/ News analytics to predict Malaysian telco stock price performance: data visualization Nor, Rozi Nor Haizan Ismarau Tajuddin, Nur Ilyana Mahathir, Muhammad Akmal Jusoh, Yusmadi Yah Aziz, Khairi Azhar The stock market refers to the collection of markets and exchanges where regular activities of buying, selling and issuance of shares of publicly held companies take place. Stock Market Index is the reading used in comparing the price of the stock market each day and it is very dynamic and susceptible to quick changes therefore a large dataset is needed to create a proper prediction model. Many believe that it follows a random walk pattern. In this project, machine learning is used so that a prediction can be made by monitoring past index patterns and predicting how they would behave in the future. Natural Language Processing is a scoring process of a word in a sentence that translates the word meaning into machine-readable value. With this, we can identify a certain topic of a stock market to be either positive or negative. Knowing these values, we can train the machine learning model to predict the price index trend and see whether news and posts related to stock price affect the market. The result of the prediction is visualized and analyzed to identify the accuracy of the data and view the disparity between the predictions and the actual value. IEEE 2023 Conference or Workshop Item PeerReviewed Nor, Rozi Nor Haizan and Ismarau Tajuddin, Nur Ilyana and Mahathir, Muhammad Akmal and Jusoh, Yusmadi Yah and Aziz, Khairi Azhar (2023) News analytics to predict Malaysian telco stock price performance: data visualization. In: 2023 9th International Conference on Information Management (ICIM 2023), 17-19 Mar. 2023, Oxford, United Kingdom. (pp. 133-138). https://ieeexplore.ieee.org/document/10145191 10.1109/ICIM58774.2023.00030
spellingShingle Nor, Rozi Nor Haizan
Ismarau Tajuddin, Nur Ilyana
Mahathir, Muhammad Akmal
Jusoh, Yusmadi Yah
Aziz, Khairi Azhar
News analytics to predict Malaysian telco stock price performance: data visualization
title News analytics to predict Malaysian telco stock price performance: data visualization
title_full News analytics to predict Malaysian telco stock price performance: data visualization
title_fullStr News analytics to predict Malaysian telco stock price performance: data visualization
title_full_unstemmed News analytics to predict Malaysian telco stock price performance: data visualization
title_short News analytics to predict Malaysian telco stock price performance: data visualization
title_sort news analytics to predict malaysian telco stock price performance data visualization
work_keys_str_mv AT norrozinorhaizan newsanalyticstopredictmalaysiantelcostockpriceperformancedatavisualization
AT ismarautajuddinnurilyana newsanalyticstopredictmalaysiantelcostockpriceperformancedatavisualization
AT mahathirmuhammadakmal newsanalyticstopredictmalaysiantelcostockpriceperformancedatavisualization
AT jusohyusmadiyah newsanalyticstopredictmalaysiantelcostockpriceperformancedatavisualization
AT azizkhairiazhar newsanalyticstopredictmalaysiantelcostockpriceperformancedatavisualization