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Regression Method for Noisy Inputs Based on Non-Parametric Estimator Constructed from Noiseless Training Data

机译:基于从无噪声训练数据构建的非参数估计器的噪声输入的回归方法

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The regression method proposed in this paper determines a regression function for noisy inputs. We represent noisy inputs by using noise and latent noise-free constituent of the noisy input. Given an observed noisy input, the proposed method estimates the posterior of the latent noise-free constituent of it, and represents the posterior using the noise distribution. For the value of the regression function for the noisy input, the method produces the expected value of the Nadaraya-Watson estimator for noiseless inputs, which is constructed from a training dataset consisting of noiseless explanatory values and the corresponding objective values. In addition, a probabilistic generative model is presented for estimating the noise distribution. This enables us to determine the noise distribution parametrically from a single noisy input, using the distribution of the noise-free constituent of the noisy input estimated from the training dataset as a prior. Experiments conducted using artificial and real datasets show that the proposed method suppresses the overfitting of the regression function for noisy inputs and that the root mean squared errors of the predictions are smaller compared with those of an existing method.
机译:本文提出的回归方法确定了噪声输入的回归函数。我们通过使用噪声输入的噪声和潜伏无噪声组分来代表嘈杂的输入。考虑到观察到的嘈杂输入,所提出的方法估计它的潜在无噪声组分的后部,并表示使用噪声分布的后部。对于嘈杂输入的回归函数的值,该方法产生Nadaraya-Watson估计器的预期值,用于无噪声输入,其由由由无噪声解释值和相应的客观值组成的训练数据集构成。另外,介绍了概率的生成模型以估计噪声分布。这使我们能够使用从训练数据集估计的噪声输入的无噪声组成的分布作为先前的噪声输入的分布来参加从单个噪声输入来确定噪声分布。使用人工和实时数据集进行的实验表明,该方法抑制了噪声输入的回归函数的过度,并且与现有方法相比,预测的根部平均平方误差较小。

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