Optimising Rule-Based Classification in Temporal Data
Polla Fattah, Uwe Aickelin, Christian Wagner

TL;DR
This paper presents an optimization method for rule-based classification of temporal data, improving how objects with changing properties over time are grouped, with applications in economics and social sciences.
Contribution
It introduces an optimization approach that refines initial expert classifications of temporal data by minimizing class compactness costs, considering dynamic behavior changes.
Findings
Enhanced classification accuracy for temporal data.
More meaningful class groupings considering behavior changes.
Potential for better interpretation of public goods game data.
Abstract
This study optimises manually derived rule-based expert system classification of objects according to changes in their properties over time. One of the key challenges that this study tries to address is how to classify objects that exhibit changes in their behaviour over time, for example how to classify companies' share price stability over a period of time or how to classify students' preferences for subjects while they are progressing through school. A specific case the paper considers is the strategy of players in public goods games (as common in economics) across multiple consecutive games. Initial classification starts from expert definitions specifying class allocation for players based on aggregated attributes of the temporal data. Based on these initial classifications, the optimisation process tries to find an improved classifier which produces the best possible compact…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Sports Analytics and Performance
