ABSTRACT An Adaptive Stock Tracker for Personalized Trading Advice.pdf
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An Adaptive Stock Tracker for
Personalized Trading Advice
Jungsoon Yoo
Computer Science Department
Middle Tennessee State University
Murfreesboro, TN 37132 USA
csyoojp@
Melinda Gervasio and Pat Langley
Institute for the Study of Learning and Expertise
2164 Staunton Court, Palo Alto, CA 94306
{gervasio, langley}@
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 unobtru-
sive data-gathering techniques. In this paper, we describe
our approach to personalized recommendation and its imple-
mentation in this domain. We also discuss experiments that
evaluate the system’s behavior on both human subjects and
synthetic users. The results suggest that the Stock Tracker
can rapidly adapt its advice to different types of users.
Categories and Subject Descriptors
H.5 [Information Systems Applications]: Information
Interfaces and Presentation
General Terms
Design, experimentation, human factors
Keywords
Adaptive user interfaces, machine learning, user modeling,
personalization, information filtering
1. INTRODUCTION
With the advent of the Internet, a wealth of information
awaits anyone within the touch of a few keystrokes. Un-
fortunately, the desired content is often buried in massive
amounts of irrelevant information and each user must cull
through the extraneous material. For example, online bro-
kerage firms now let one check stock prices and make trans-
actions through aWeb browser. With all the stocks available
throughout the world, there are more opportunities to make
or lose money, but only if one has the time and energy to
follow those stocks. Tracking tens of thousands of stocks is
beyond the capability of any single user.
Permission to make digital or hard copies of all or part of this work for
personal or classroom use is gran
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