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Cooperative optimization for efficient financial time series forecasting | IEEE Conference Publication | IEEE Xplore

Cooperative optimization for efficient financial time series forecasting


Abstract:

The highly dynamic nonlinear and volatile nature of stock market has remained a challenging issue for the researchers in mathematical economics as well as in financial en...Show More

Abstract:

The highly dynamic nonlinear and volatile nature of stock market has remained a challenging issue for the researchers in mathematical economics as well as in financial engineering. Despite the existence of a number of statistical and soft computing methodologies for stock market forecasting, there is still need for an efficient and accurate forecasting model for this purpose. Although a wide range of nature inspired evolutionary algorithms have been developed and applied successfully in the domain of stock market forecasting, their performance may vary significantly from one stock market to another. Therefore selection of an algorithm involves an inherit risk associated with it. In this paper, instead of employing a single algorithm and investing the total time budget in it, we construct a cooperative algorithm framework, which takes two algorithms as its constituent algorithms. Particularly two population-based algorithms such as genetic algorithm (GA) and chemical reaction optimization (CRO) have been chosen as the constituent algorithms. A multilayer perceptron (MLP) architecture have been used as the forecasting model. The cooperative algorithm framework executes each constituent algorithm with a part of the entire computation time budget and encourages interaction between them, so that they can benefit from one other. The cooperative algorithms have evaluated on five fast growing real stock market data set consisting daily closing prices. Empirical results have shown the superiority of the cooperative algorithms over individuals in terms of prediction accuracies.
Date of Conference: 05-07 March 2014
Date Added to IEEE Xplore: 12 June 2014
ISBN Information:
Conference Location: New Delhi, India

I. Introduction

The accurate and effective stock index forecasting can help common investors to hedge against potential market risks and allow for market speculation. Although stock market trend is influenced by certain fundamental indicators, they are highly affected by some macro-economic factors such as political situations of a nation, strategic planning of corporate houses and above all psychological make-up of individual investors. Stock market behaves very much like a random walk process and their serial correlation is economically and statistically insignificant. Due to the influences of uncertainties involved in the movement of the market, stock market forecasting is regarded as a challenging and difficult task in financial time-series forecasting. Predicting stock market prices movements is quite difficult also due to its nonlinearities, highly volatile nature, discontinuities, movement of other stock markets, political influences and other many macro-economical factors.

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References

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