Abstract:
The purpose of this study is to develop a methodology for change points detection in time series, including financial data. The theoretical basis of the study is based on the pieces of research devoted to the analysis of structural changes in financial markets, description of the proposed algorithms for detecting change points and peculiarities of building classical and deep machine learning models for solving this type of problems. The development of such tools is of interest to investors and other stakeholders, providing them with additional approaches to the effective analysis of financial markets and interpretation of available data.
To address the research objective, a neural network was trained. In the course of the study several ways of training sample formation were considered, differing in the nature of statistical parameters. In order to improve the quality of training and obtain more accurate results, a methodology for feature generation was developed for the formation of features that serve as input data for the neural network. These features, in turn, were derived from an analysis of mathematical expectations and standard deviations of time series data over specific intervals. The potential for combining these features to achieve more stable results is also under investigation.
The results of model experiments were analyzed to compare the effectiveness of the proposed model with other existing changepoint detection algorithms that have gained widespread usage in practical applications. A specially generated dataset, developed using proprietary methods, was utilized as both training and testing data. Furthermore, the model, trained on various features, was tested on daily data from the S&P 500 index to assess its effectiveness in a real financial context.
As the principles of the model’s operation are described, possibilities for its further improvement are considered, including the modernization of the proposed model’s structure, optimization of training data generation, and feature formation. Additionally, the authors are tasked with advancing existing concepts for real-time changepoint detection.
Keywords:
changepoint detection, time series analysis, financial markets, machine learning, neural networks
This research was performed in the framework of the state task in the field of scientific activity of the Ministry of Science
and Higher Education of the Russian Federation, project “Models, methods, and algorithms of artificial intelligence in
the problems of economics for the analysis and style transfer of multidimensional datasets, time series forecasting, and
recommendation systems design”, grant no. FSSW-2023-0004.
Citation:
N. A. Moiseev, D. I. Nazarova, N. S. Semina, D. A. Maksimov, “Changepoint detection on financial data using deep learning approach”, Computer Research and Modeling, 16:2 (2024), 555–575