File Download

There are no files associated with this item.

  • Find it @ UNIST can give you direct access to the published full text of this article. (UNISTARs only)

Views & Downloads

Detailed Information

Cited time in webofscience Cited time in scopus
Metadata Downloads

Full metadata record

DC Field Value Language
dc.contributor.advisor Lim, Dongyoung -
dc.contributor.author Koo, Dohyeon -
dc.date.accessioned 2025-04-04T13:49:56Z -
dc.date.available 2025-04-04T13:49:56Z -
dc.date.issued 2025-02 -
dc.description.abstract In financial markets, trading volume is a very important indicator as it directly affects market liquidity, price volatility, and trading fees. Therefore, forecasting trading volume is an important objective in the financial sector. In particular, the importance of volume forecasting becomes even more important in High-Frequency Trading (HFT). It is important to quickly detect buy and sell signals as trades are executed in a short time term. It is also essential for optimizing trading strategies based on volume and managing risks from volume effects. However, predicting volume is very difficult. This is due to the distributional properties of financial data, such as zero-inflated and heavy-tailed. Existing machine learning approaches often show unsatisfactory performance because they do not reflect the distributional properties of financial data well. Therefore, this paper proposes a new hybrid machine learning approach to solve the problems of existing methodologies and improve the accuracy of good volume prediction in high-frequency trading. The key ideas of our proposed methodology are as follows: First, the prediction of total volume over a short time term can be represented by a compound random sum. Second, the zero-inflated and heavy-tailed distributional properties of total volume are determined by the order frequency and size of the market, which are components of the compound random sum, and each component can be modeled based on appropriate probability distribution assumptions. Third, neural networks can be used to effectively capture the correlation of complex, high-dimensional financial data through a nonlinear structure, and the parameters of the distribution of the modeled components can be effectively expressed through the learning process. Finally, we demonstrate the superiority of our methodology by comparing the performance of our proposed methodology and existing benchmarks in a high-frequency trading environment using real KOSPI200 Futures. -
dc.description.degree Master -
dc.description Department of Industrial Engineering -
dc.identifier.uri https://scholarworks.unist.ac.kr/handle/201301/86500 -
dc.identifier.uri http://unist.dcollection.net/common/orgView/200000865972 -
dc.language ENG -
dc.publisher Ulsan National Institute of Science and Technology -
dc.subject financial data -
dc.subject Neural Network -
dc.subject Generalized Linear Model -
dc.subject High-Frequency Trading -
dc.subject Distributional Characteristics -
dc.subject Machine Learning -
dc.subject Maximum loglikelihood estimation -
dc.title Predicting Trading Volume in High-Frequency Financial Data: A Hybrid Machine Learning Approach for Modeling Zero-Inflated and HeavyTailed Characteristics -
dc.type Thesis -

qrcode

Items in Repository are protected by copyright, with all rights reserved, unless otherwise indicated.