Article ID Journal Published Year Pages File Type
8953577 Neurocomputing 2018 20 Pages PDF
Abstract
Ordinal regression (OR) is an important research topic in machine learning and has attracted extensive attention due to its wide applications. So far, a variety of methods have been proposed to perform OR, in which the class-center-induced threshold methods (like KDLOR and MOR) have received more attention, for their simplicity and promising performance. The class-center-induced ORs typically calculate the ordinal thresholds with class centers, which are typically derived from the l2-norm. Unfortunately, in such a way, the class means may be biased when the data is corrupted with outliers (i.e., non-i.i.d. noises) such that the resulting OR accuracy will be deteriorated. Motivated by the success of lp-norm in applications against noises, in this paper we propose a novel type of class centroid derived from the lp-norm (coined as lp-centroid) to overcome the drawbacks above, and provide an optimization algorithm and corresponding convergence analysis for computing the lp-centroid. To evaluate the effectiveness of lp-centroid in OR context against noises, we then combine the lp-centroid with two representative class-center-induced ORs, namely discriminant learning based and manifold learning based ORs. Finally, extensive OR experiments on synthetic and real-world datasets demonstrate the effectiveness and superiority of the proposed methods to related existing methods.
Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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