Magic of Fibonacci Sequence in Prediction of Stock Behavior

  title={Magic of Fibonacci Sequence in Prediction of Stock Behavior},
  author={R. Kumar},
  journal={International Journal of Computer Applications},
  • R. Kumar
  • Published 2014
  • Computer Science
  • International Journal of Computer Applications
the return of a financial product is a very risky task. It involves subjectivity and experts knowledge. In the development of an expert system, domain knowledge is one of the important component. For a software to be artificial intelligent, some heuristics are required, which can help in decision making. It is admitted by the technical experts of financial sectors that in predicting the support or resistance backtracking is required when prediction of support or resistance fails. In this paper… Expand
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