Lazy Learning For Norparametric Locally Weighted Regression

INTERNATIONAL JOURNAL OF FUZZY LOGIC AND INTELLIGENT SYSTEMS(2020)

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摘要
In this study, a newly designed local model called locally weighted regression model is proposed for the regression problem. This model predicts the output for a newly submitted data point. In general, the local regression model focuses on an area of the input space specified by a certain kernel function (Gaussian function, in particular). The local area is defined as a region enclosed by a neighborhood of the given query point. The weights assigned to the local area are determined by the related entries of the partition matrix originating from the fuzzy C-means method. The local regression model related to the local area is constructed using a weighted estimation technique. The model exploits the concept of the nearest neighbor, and constructs the weighted least square estimation once a new query is provided given. We validate the modeling ability of the overall model based on several numeric experiments.
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关键词
k-nearest neighbors, Locally weighted regression, Weighted least square estimation, Lazy learning, Fuzzy C-means clustering
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