Forecasting Changes in Stock Prices on the Basis of Patterns Identified with the Use of Data Classification Methods Cover Image

Forecasting Changes in Stock Prices on the Basis of Patterns Identified with the Use of Data Classification Methods
Forecasting Changes in Stock Prices on the Basis of Patterns Identified with the Use of Data Classification Methods

Author(s): Jacek Szanduła
Subject(s): Economy, ICT Information and Communications Technologies
Published by: Wydawnictwo Naukowe Uniwersytetu Szczecińskiego
Keywords: data classification; cluster analysis; partitioning around medoids; technical analysis; price patterns

Summary/Abstract: The paper develops the concept of harnessing data classification methods to recognize patterns in stock prices. The author defines a formation as a pattern vector describing the financial instrument. Elements of such a vector can be related to the stock price as well as sales volume and other characteristics of the financial instrument. The study uses data concerning selected companies listed on the stock exchange in New York. It takes into account a number of variables that describe the behavior of prices and volume, both in the short and long term. Partitioning around medoids method has been used for data classification (for pattern recognition). An evaluation of the possibility of using certain formations for practical purposes has also been presented.

  • Issue Year: 14/2014
  • Issue No: 1
  • Page Range: 7-21
  • Page Count: 15
  • Language: English