Classification of Human Decision Behavior: Finding Modular Decision Rules with Genetic Algorithms
Inhalt
The understanding of human behavior in sequential decision tasks is important for economics and socio-psychological sciences. In search tasks,
for example when individuals search for the best price of a product, they
are confronted in sequential steps with different situations and they have
to decide whether to continue or stop searching. The decision behavior of
individuals in such search tasks is described by a search strategy.
This paper presents a new approach of finding high-quality search
strategies by using genetic algorithms (GAs). Only the structure of the
search strategies and the basic building blocks (price thresholds and price
patterns) that can be used for the search strategies are pre-specified. It
is the purpose of the GA to construct search strategies that well describe
human search behavior. The search strategies found by the GA are able
to predict human behavior in search tasks better than traditional search
strategies from the literature which are usually based on theoretical assumptions about human behavior in search tasks. Furthermore, the found
search strategies are reasonable in the sense that they can be well interpreted, and generally that means they describe the search behavior of
a larger group of individuals and allow some kind of categorization and
classification.
The results of this study open a new perspective for future research in
developing behavioral strategies. Instead of deriving search strategies from theoretical assumptions about human behavior, researchers can directly
analyze human behavior in search tasks and find appropriate and high-
quality search strategies. These can be used for gaining new insights into
the motivation behind human search and for developing new theoretical
models about human search behavior.
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