Stock Tracking and Analysis for Personalized Trading Advice Using Adaptive User Interface

Authors

  • Preeti Aage Department of Computer, Yadavrao Tasgaonkar Institute of Engineering and Technology Mumbai University, Maharastra, India
  • Mayur Pawar Department of Computer, Yadavrao Tasgaonkar Institute of Engineering and Technology, Mumbai University, Maharastra, India
  • Sayali Sarang Department of Computer, Yadavrao Tasgaonkar Institute of Engineering and Technology Mumbai University, Maharastra, India
  • Rakhi Patil Department of Computer, Yadavrao Tasgaonkar Institute of Engineering and Technology Mumbai University, Maharastra, India

DOI:

https://doi.org/10.53555/nncse.v2i3.489

Keywords:

Adaptive user interfaces, machine learning, user modelling, personalization, information filtering

Abstract

The Stock Tracker is an adaptive recommendation system for trading stocks that automatically acquires content based models of user preferences to tailor its buy and sell advice. The system incorporates an efficient algorithm that exploits the fixed structure of user models and relies on unobtrusive data-gathering techniques. In this paper, we describe our approach to personalized recommendation and its implementation in this domain. We also discuss experiments that evaluate the system's behaviour on both human subjects and synthetic users. The results suggest that the Stock Tracker can rapidly adapt its advice to different types of users.

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Websites

http://www.cs.wpi.edu

http://www.finquestonline.com

Downloads

Published

2015-03-31

How to Cite

Aage, P., Pawar, M., Sarang, S., & Patil, R. (2015). Stock Tracking and Analysis for Personalized Trading Advice Using Adaptive User Interface. Journal of Advance Research in Computer Science & Engineering (ISSN 2456-3552), 2(3), 49-56. https://doi.org/10.53555/nncse.v2i3.489