An adaptive error penalization method for training an efficient and generalized SVM
نویسندگان
چکیده
A novel training method has been proposed for increasing efficiency and generalization of support vector machine (SVM). The efficiency of SVM in classification is directly determined by the number of the support vectors used, which is often huge in the complicated classification problem in order to represent a highly convoluted separation hypersurface for better nonlinear classification. However, the separation hypersurface of SVM might be unnecessarily over-convoluted around extreme outliers, as these outliers can easily dominate the objective function of SVM. This situation eventually affects the efficiency and generalization of SVM in classifying unseen testing samples. To avoid this problem, we propose a novel objective function for SVM, i.e., an adaptive penalty term is designed to suppress the effects of extreme outliers, thus simplifying the separation hypersurface and increasing the classification efficiency. Since maximization of the margin distance of hypersurface is no longer dominated by those extreme outliers, our generated SVM tends to have a wider margin, i.e., better generalization ability. Importantly, as our designed objective function can be reformulated as a dual problem, similar to that of standard SVM, any existing SVM training algorithm can be borrowed for the training of our proposed SVM. The performances of our method have been extensively tested on the UCI machine learning repository, as well as a real clinical problem, i.e., tissue classification in prostate ultrasound images. Experimental results show that our method is able to simultaneously increase the classification efficiency and the generalization ability of the SVM. 2005 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
منابع مشابه
An Efficient Adaptive Boundary Matching Algorithm for Video Error Concealment
Sending compressed video data in error-prone environments (like the Internet and wireless networks) might cause data degradation. Error concealment techniques try to conceal the received data in the decoder side. In this paper, an adaptive boundary matching algorithm is presented for recovering the damaged motion vectors (MVs). This algorithm uses an outer boundary matching or directional tempo...
متن کاملAn adaptive estimation method to predict thermal comfort indices man using car classification neural deep belief
Human thermal comfort and discomfort of many experimental and theoretical indices are calculated using the input data the indicator of climatic elements are such as wind speed, temperature, humidity, solar radiation, etc. The daily data of temperature، wind speed، relative humidity، and cloudiness between the years 1382-1392 were used. In the First step، Tmrt parameter was calculated in the Ray...
متن کاملA New Formulation for Cost-Sensitive Two Group Support Vector Machine with Multiple Error Rate
Support vector machine (SVM) is a popular classification technique which classifies data using a max-margin separator hyperplane. The normal vector and bias of the mentioned hyperplane is determined by solving a quadratic model implies that SVM training confronts by an optimization problem. Among of the extensions of SVM, cost-sensitive scheme refers to a model with multiple costs which conside...
متن کاملModel selection using Rademacher Penalization
In this paper we describe the use of Rademacher penalization for model selection. As in Vapnik's Guaranteed Risk Minimization (GRM), Rademacher penalization attemps to balance the complexity of the model with its t to the data by minimizing the sum of the training error and a penalty term, which is an upper bound on the absolute di erence between the training error and the generalization error....
متن کاملA new method for 3-D magnetic data inversion with physical bound
Inversion of magnetic data is an important step towards interpretation of the practical data. Smooth inversion is a common technique for the inversion of data. Physical bound constraint can improve the solution to the magnetic inverse problem. However, how to introduce the bound constraint into the inversion procedure is important. Imposing bound constraint makes the magnetic data inversion a n...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- Pattern Recognition
دوره 39 شماره
صفحات -
تاریخ انتشار 2006