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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Locally adaptive metric nearest-neighbor classification
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Locally adaptive metric nearest-neighbor classification

机译:局部自适应度量最近邻居分类

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摘要

Nearest-neighbor classification assumes locally constant class conditional probabilities. This assumption becomes invalid in high dimensions with finite samples due to the curse of dimensionality. Severe bias can be introduced under these conditions when using the nearest-neighbor rule. We propose a locally adaptive nearest-neighbor classification method to try to minimize bias. We use a chi-squared distance analysis to compute a flexible metric for producing neighborhoods that are highly adaptive to query locations. Neighborhoods are elongated along less relevant feature dimensions and constricted along most influential ones. As a result, the class conditional probabilities are smoother in the modified neighborhoods, whereby better classification performance can be achieved. The efficacy of our method is validated and compared against other techniques using both simulated and real-world data.
机译:最近邻分类假设局部恒定的类条件概率。由于维数的诅咒,这种假设在具有有限样本的高维数中变得无效。使用最近邻居规则时,在这些情况下可能会引入严重偏差。我们提出了一种局部自适应的最近邻分类方法,以尽量减少偏差。我们使用卡方距离分析来计算灵活的指标,以产生对查询位置高度适应的邻域。邻域沿不太相关的特征维度拉长,而沿最具影响力的特征拉近。结果,在修改后的邻域中,类别条件概率更加平滑,从而可以实现更好的分类性能。我们的方法的有效性已得到验证,并使用模拟和真实数据与其他技术进行了比较。

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