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Article
Gaining Competitive Advantage for Trading in Emerging Capital Markets with Neural Networks
Journal of Management Information Systems
  • Steven Walczak, University of South Florida
Document Type
Article
Publication Date
1-1-1999
Keywords
  • emerging markets,
  • trading,
  • neural networks,
  • Pacific Rim
Digital Object Identifier (DOI)
https://doi.org/10.1080/07421222.1999.11518251
Abstract

Emerging capital markets may not be as efficient as the more established equity markets. Because of the possible inefficiency in these markets, various indica- tors that are external to the emerging capital market may provide a significant trading advantage. A preliminary analysis suggests that the Singapore market appears to be efficient. Neural network models are used to evaluate the claim that emerging equity markets, specifically the Singapore exchange, are affected by external signals and attempt to exploit any trading advantage imparted by these signals. The neural network technique as it is applied to trading on market indices in the "emerging" Singapore market is compared with the more established Dow Jones market index. Results indicate that external market signals can significantly improve forecasting on the Singapore DBS50 index but have little or no effect on forecasts for the more established Dow Jones Industrial Average index. The research demonstrates the efficacy of using neural network methods to capitalize on discovered market ineffi- ciencies. Utilizing external market signals, a neural network forecasting model achieved a 63 percent trading prediction accuracy.

Citation / Publisher Attribution

Journal of Management Information Systems, v. 16, no. 2, p. 177-192

Citation Information
Steven Walczak. "Gaining Competitive Advantage for Trading in Emerging Capital Markets with Neural Networks" Journal of Management Information Systems Vol. 16 Iss. 2 (1999) p. 177 - 192
Available at: http://works.bepress.com/steven-walczak/35/