Machine Learning for Capital Market Research and Portfolio Optimization
Access Status
Fulltext not available
Embargo Lift Date
2026-08-06
Date
2024Supervisor
Goi Chai Lee Goi
Type
Thesis
Award
PhD
Metadata
Show full item recordFaculty
Curtin Malaysia
School
Curtin Malaysia
Collection
Abstract
Selecting stocks from a large number of active stocks is a critical investment decision. In this study, traditional and machine learning techniques are employed to identify promising stocks. The proposed strategies incorporate historical price paths into momentum techniques and remove stocks with extreme returns. It enhances the fundamental investment decision of stock selection to construct optimized portfolios. These methodologies outperform the standard momentum technique, reduces transaction costs and hedges investors during financial crises.
Related items
Showing items related by title, author, creator and subject.
-
Pojanavatee, Sasipa (2013)Mutual funds are emerging as an opportunity for investors to automatically diversify their investments in such a way that all their money is pooled and the investment decisions are left to a professional manager. There ...
-
Joarder, Munim; Ahmed, M.; Haque, T.; Hasanuzzaman, S. (2014)We investigate how efficiently the stock market participants incorporate the information contained in money supply changes into stock prices in an emerging economy like Bangladesh. Of particular interest is to test how ...
-
Jackson, G.; Cheng, Y.; Wakefield, Corey (2012)The daily egg production method (DEPM) has been used to estimate spawning biomass of separate stocks of snapper (Pagrus auratus) in the inner gulfs of Shark Bay, Western Australia, since 1997. While these stocks have been ...