Abstract

Markets play a critical role in economics of the world and the distribution of wealth. Predicting them can help with preventing crashes and avoiding severe losses, or making significant profits. But such prediction is not easy due to the very complex nature of markets and the wide variety of the influence factors involved. Technical analysts or chartists rely on historical chart data to predict patterns based on previous behaviours of graphs. This approach is fairly straightforward and has also been automated to a great extent. There are computer programs or predictor robots that use the technical approach and facilitate buy or sell decisions. However, market behaviour obviously is more than repetition of old patterns and many of the events in the outside world have constant impacts on it. These external pieces of information can vary from political events to economic statistics. Fundamental analysts are those with a knowledge and understanding of the world events on market behaviour. This requires knowledge of politics, micro and macroeconomics to say the least, and hence, there are far fewer of such analysts. However, the very successful analysts like Warren Buffet have repeatedly emphasized on consideration of fundamental data in prediction calculations. Nevertheless, proper fundamental analysis remains to be a challenge and even a bigger challenge when it comes to its automation. There are very few research efforts and approaches which look into possibilities of automation of fundamental analysis. Hence, this work initiated a novel approach on fundamental data manipulation for identification of relationships between market behaviour and external information. This work made an effort to apply the afore in the foreign exchange market by observing the USD/GBP currency pair. In this research, an approach was devised and proposed for integration of fundamental data into automatic prediction. In this approach 3 main sources for fundamental data were identified. From these sources, data was extracted, organized and then fed into a proposed neural network during 6 experiments. The experiments put the possible relationships between the identified fundamental data and the price movements of the chosen currency pair (USD/GBP) to test. The test results indentified the datasets with plausible relationships with the market behaviour. The observed positive output of 3 different sets of data-input proved the proposed methodology to be of considerable value for market prediction. Key words: Foreign exchange market prediction, stock market prediction, neural networks, fundamental analysis, market behaviour.

Highlights

  • In today’s economy, stock markets play an essential role in the circumstances of nations

  • This indicates that based on the input alone, the neural network is capable of predicting the currency pair’s price

  • The neural networks did not manage to identify any relationship between different aspects of monthly UK international reserves as combined input, nor was any relationship found for the monthly balance of import and export in goods and services and the total monthly export of goods and services in the U.S the monthly U.S retail and food sales proved to have a relationship with the currency pair’s moves which was detected by the neural networks

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Summary

Introduction

In today’s economy, stock markets play an essential role in the circumstances of nations. The total world derivatives market has been estimated at about $ 791 trillion face or nominal value, (BIS, 2008) 11 times the size of the entire world economy. The concept of publicly listed companies and shared ownership by the crowds is very powerful in sourcing financial capital for public companies. A public company issues stocks, which are traded on the open market, either on a stock exchange or on the over-the-counter market. The largest stock market in the United States, by market cap, is the New York Stock Exchange (NYSE) and in Canada, the Toronto Stock Exchange. Major European stock exchanges include the London Stock

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