Mining Stock Market Time Series and Modeling Stock Price Crash Using a Pretopological Framework.

Master'sNguyen Ngoc Kim KhanhQuang Nguyen, Marc Bui

Faculty of Fundamental Sciences

Research output: Proceeding

researchs.abstract

We introduce a computational framework, namely a pretopological construct, for mining time series of stock prices in a financial market in order to expand a set of stocks by adding outside stocks whose average correlations with the inside are above a threshold. The threshold is considered as a function of the set’s size to verify the effect of group impact in a financial crisis. The efficiency of this approach is tested by a consecutive expansion process started from a single stock of Merrill Lynch & Co., which had a large influence in the United State market during the studying time. We found that the ability to imitate the real diffusion process can be classified into three cases according to the value of θ - a scaling constant of the threshold function. Finally, the process using pretopological framework is compared to a classical one, the minimum spanning tree of the corresponding stock network, showing its pertinence.

Overview
Type
Proceeding
Publication year
Aug 2019
Original language
English
Published Journal
Computational Collective Intelligence. ICCCI 2019. Lecture Notes in Computer Science
Volume No
11683
Classification
Scopus Indexed
ISSN index
0302-9743
ISBN Index
978-3-030-28376-6
Quartiles
Q2

Access Document Overview

To read the full-text of this publication, you can request a copy directly from the authors.