@article{oai:kanazawa-u.repo.nii.ac.jp:00008357, author = {北山, 哲士 and 山崎, 光悦 and Kitayama, Satoshi and Yamazaki, Koetsu}, issue = {8}, journal = {Applied Soft Computing Journal}, month = {Dec}, note = {This paper presents a simple method to estimate the width of Gaussian kernel based on an adaptive scaling technique. The Gaussian kernel is widely employed in radial basis function (RBF) network, support vector machine (SVM), least squares support vector machine (LS-SVM), Kriging models, and so on. It is widely known that the width of the Gaussian kernel in these machine learning techniques plays an important role. Determination of the optimal width is a time-consuming task. Therefore, it is preferable to determine the width with a simple manner. In this paper, we first examine a simple estimate of the width proposed by Nakayama et al. Through the examination, four sufficient conditions for the simple estimate of the width are described. Then, a new simple estimate for the width is proposed. In order to obtain the proposed estimate of the width, all dimensions are equally scaled. A simple technique called the adaptive scaling technique is also developed. It is expected that the proposed simple method to estimate the width is applicable to wide range of machine learning techniques employing the Gaussian kernel. Through examples, the validity of the proposed simple method to estimate the width is examined. © 2011 Elsevier B.V. All rights reserved.}, pages = {4726--4737}, title = {Simple estimate of the width in Gaussian kernel with adaptive scaling technique}, volume = {11}, year = {2011} }