Forecasting movements of health-care stock prices based on different categories of news articles using multiple kernel learning

Yauheniya Shynkevich, T.m. Mcginnity, Sonya A. Coleman, Ammar Belatreche

Research output: Contribution to journalArticlepeer-review

71 Citations (Scopus)
17 Downloads (Pure)

Abstract

The market state changes when a new piece of information arrives. It affects decisions made by investors and is considered to be an important data source that can be used for financial forecasting. Recently information derived from news articles has become a part of financial predictive systems. The usage of news articles and their forecasting potential have been extensively researched. However, so far no attempts have been made to utilise different categories of news articles simultaneously. This paper studies how the concurrent, and appropriately weighted, usage of news articles, having different degrees of relevance to the target stock, can improve the performance of financial forecasting and support the decision-making process of investors and traders. Stock price movements are predicted using the multiple kernel learning technique which integrates information extracted from multiple news categories while separate kernels are utilised to analyse each category. News articles are partitioned according to their relevance to the target stock, its sub-industry, industry, group industry and sector. The experiments are run on stocks from the Health Care sector and show that increasing the number of relevant news categories used as data sources for financial forecasting improves the performance of the predictive system in comparison with approaches based on a lower number of categories.
Original languageEnglish
Pages (from-to)74-83
JournalDecision Support Systems
Volume85
Early online date8 Mar 2016
DOIs
Publication statusPublished - 1 May 2016

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