人工智能
计算机科学
机器学习
经验风险最小化
判别式
线性分类器
感知器
空间分割
监督学习
稳健性(进化)
模式识别(心理学)
特征向量
序数回归
分类器(UML)
人工神经网络
算法
生物化学
化学
基因
作者
Joseph Wang,Venkatesh Saligrama
摘要
We develop a novel approach for supervised learning based on adaptively partitioning the feature space into different regions and learning local region-specific classifiers. We formulate an empirical risk minimization problem that incorporates both partitioning and classification in to a single global objective. We show that space partitioning can be equivalently reformulated as a supervised learning problem and consequently any discriminative learning method can be utilized in conjunction with our approach. Nevertheless, we consider locally linear schemes by learning linear partitions and linear region classifiers. Locally linear schemes can not only approximate complex decision boundaries and ensure low training error but also provide tight control on over-fitting and generalization error. We train locally linear classifiers by using LDA, logistic regression and perceptrons, and so our scheme is scalable to large data sizes and high-dimensions. We present experimental results demonstrating improved performance over state of the art classification techniques on benchmark datasets. We also show improved robustness to label noise.
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