Filtering and Denoising in the Linear Regression Model.

Hassani, H., Mahmoudvand , R. and Yarmohammadi, M., 2010. Filtering and Denoising in the Linear Regression Model. Fluctuation and Noise Letters, 9 (4), pp. 343-358.

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DOI: 10.1142/S0219477510000289

Abstract

In this paper we examine the effect of outlier/leverage point on the accuracy measures in the linear regression models. We use the coefficient of determination, which is a measure of model adequacy, to compare the effect of filtering approach on the least squares estimates. We also compare the performance of the filter-based approach with several resistant methods in a situation where there are several outliers in the data sets. Specifically, we examine the sensitivity of the resistant methods and the proposed approach in the circumstances where there are several leverage points in the data sets. To gain a better understanding of the effect of filtering and evaluating the performance of the proposed approach, we consider real data and simulation studies with several sample sizes, different percentage of outliers, and various noise levels.

Item Type:Article
ISSN:0219-4775
Subjects:Technology > Engineering > Electrical and Electronic Engineering
Science > Mathematics
Group:Business School
ID Code:19795
Deposited By:Dr Hossein Hassani
Deposited On:04 Apr 2012 10:05
Last Modified:07 Mar 2013 15:54
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