Machine Learning for Financial Prediction Under Regime Change Using Technical Analysis: A Systematic Review

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Abstract
Recent crises, recessions and bubbles have stressed the non-stationary nature and the presence of drastic structural changes in the financial domain. The most recent literature suggests the use of conventional machine learning and statistical approaches in this context. Unfortunately, several of these techniques are unable or slow to adapt to changes in the price-generation process. This study aims to survey the relevant literature on Machine Learning for financial prediction under regime change employing a systematic approach.
It reviews key papers with a special emphasis on technical analysis. The study discusses the growing number of contributions that are bridging the gap between two separate communities, one focused on data stream learning and the other on economic research. However, it also makes apparent that we are still in an early stage. The range of machine learning algorithms that have been tested in this domain is very wide, but the results of the study do not suggest that currently there is a specific technique that is clearly dominant.
Year of Publication
2024
Journal
International Journal of Interactive Multimedia and Artificial Intelligence
Volume
9
Start Page
137
Issue
Regular issue
Number
1
Number of Pages
137-148
Date Published
12/2024
ISSN Number
1989-1660
URL
DOI
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