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arxiv: 1610.05710 · v2 · pith:RBBYXKGXnew · submitted 2016-10-18 · 💻 cs.DS · cs.LG

Feasibility Based Large Margin Nearest Neighbor Metric Learning

classification 💻 cs.DS cs.LG
keywords lmnnmetricoptimizationdatasetsevaluatefeasibilityfeasiblelarge
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Large margin nearest neighbor (LMNN) is a metric learner which optimizes the performance of the popular $k$NN classifier. However, its resulting metric relies on pre-selected target neighbors. In this paper, we address the feasibility of LMNN's optimization constraints regarding these target points, and introduce a mathematical measure to evaluate the size of the feasible region of the optimization problem. We enhance the optimization framework of LMNN by a weighting scheme which prefers data triplets which yield a larger feasible region. This increases the chances to obtain a good metric as the solution of LMNN's problem. We evaluate the performance of the resulting feasibility-based LMNN algorithm using synthetic and real datasets. The empirical results show an improved accuracy for different types of datasets in comparison to regular LMNN.

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