Bias-Variance Analysis for Relational Domains
Neville, J. and D. Jensen (2007). Bias-Variance Analysis for Relational Domains. In Proceedings of the 17th International Conference on Inductive Logic Programming.
- Abstract
- Bias/variance analysis is a useful tool for investigating the
performance of machine learning algorithms. Conventional analysis decomposes
loss into errors due to aspects of the learning process, but in
relational domains, the inference process introduces an additional source
of error. Collective inference techniques introduce additional error both
through the use of approximate inference algorithms and through variation
in the availability of test set information. To date, the impact of
inference error on model performance has not been investigated. In this
paper, we propose a new bias/variance framework that decomposes loss
into errors due to both the learning and inference process. We evaluate
performance of three relational models and show that (1) inference can
be a significant source of error, and (2) the models exhibit different types
of errors as data characteristics are varied.
- Text
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