4.3 Article

Fragment generation and support vector machines for inducing SARs

Journal

SAR AND QSAR IN ENVIRONMENTAL RESEARCH
Volume 13, Issue 5, Pages 509-523

Publisher

TAYLOR & FRANCIS LTD
DOI: 10.1080/10629360290023340

Keywords

SARs; fragments; support vector machines; machine learning; data mining

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We present a new approach to the induction of SARs based on the generation of structural fragments and support vector machines (SVMs). It is tailored for bio-chemical databases, where the examples are two-dimensional descriptions of chemical compounds. The fragment generator finds all fragments (i.e. linearly connected atoms) that satisfy user-specified constraints regarding their frequency and generality. In this paper, we are querying for fragments within a minimum and a maximum frequency in the dataset. After fragment generation, we propose to apply SVMs to the problem of inducing SARs from these fragments. We conjecture that the SVMs are particularly useful in this context, as they can deal with a large number of features. Experiments in the domains of carcinogenicity and mutagenicity prediction show that the minimum and the maximum frequency queries for fragments can be answered within a reasonable time, and that the predictive accuracy obtained using these fragments is satisfactory. However, further experiments will have to confirm that this is a viable approach to inducing SARs.

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