A key component of automated algorithm selection and configuration, which in most cases are performed using supervised machine learning (ML) methods is a good-performing predictive model. The predictive model uses the feature representation of a set of problem instances as input data and predicts the algorithm performance achieved on them. Common machine learning models struggle to make predictions for instances with feature representations not covered by the training data, resulting in poor generalization to unseen problems. In this study, we propose a workflow to estimate the generalizability of a predictive model for algorithm performance, trained on one benchmark suite to another. The workflow has been tested by training predictive models across benchmark suites and the results show that generalizability patterns in the landscape feature space are reflected in the performance space.
机构:
Univ Wisconsin, Dept Chem, Madison, WI 53706 USAUniv Utah, Dept Pharmaceut & Pharmaceut Chem, Dept Bioengn, Salt Lake City, UT 84108 USA
Fako, Valerie E.
Furgeson, Darin Y.
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机构:
Univ Utah, Dept Pharmaceut & Pharmaceut Chem, Dept Bioengn, Salt Lake City, UT 84108 USAUniv Utah, Dept Pharmaceut & Pharmaceut Chem, Dept Bioengn, Salt Lake City, UT 84108 USA