A Computational Model for Logical Analysis of Data
Dani\`ele Gardy, Fr\'ed\'eric Lardeux, Fr\'ed\'eric Saubion

TL;DR
This paper introduces probabilistic models and combinatorial methods to improve the efficiency of Logical Analysis of Data (LAD) by estimating attribute-based group characterizations and analyzing algorithm performance.
Contribution
It proposes new probabilistic models and analytic combinatorics techniques to speed up LAD computations and better understand its computational challenges.
Findings
Models enable quick probability estimates for attribute-based group characterization.
Analytic combinatorics expresses probabilities as ratios of generating functions.
Methods facilitate analysis of LAD algorithm performance.
Abstract
Initially introduced by Peter Hammer, Logical Analysis of Data is a methodology that aims at computing a logical justification for dividing a group of data in two groups of observations, usually called the positive and negative groups. Consider this partition into positive and negative groups as the description of a partially defined Boolean function; the data is then processed to identify a subset of attributes, whose values may be used to characterize the observations of the positive groups against those of the negative group. LAD constitutes an interesting rule-based learning alternative to classic statistical learning techniques and has many practical applications. Nevertheless, the computation of group characterization may be costly, depending on the properties of the data instances. A major aim of our work is to provide effective tools for speeding up the computations, by…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Rough Sets and Fuzzy Logic · Advanced Algebra and Logic
