Abstract
We consider a large volume principle for transductive learning that prioritizes the transductive equivalence classes according to the volume they occupy in hypothesis space. We approximate volume maximization using a geometric interpretation of the hypothesis space. The resulting algorithm is defined via a non-convex optimization problem that can still be solved exactly and efficiently. We provide a bound on the test error of the algorithm and compare it to transductive SVM (TSVM) using 31 datasets. © 2008 Springer Science+Business Media, LLC.
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El-Yaniv, R., Pechyony, D., & Vapnik, V. (2008). Large margin vs. large volume in transductive learning. Machine Learning, 72(3), 173–188. https://doi.org/10.1007/s10994-008-5071-9
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