TY - JOUR JF - srtc-jsri JO - JSRI VL - 3 IS - 1 PY - 2006 Y1 - 2006/9/01 TI - Outlier Detection by Boosting Regression Trees TT - شناسایی نقاط دورافتاده با استفاده از تقویت درخت‌های رگرسیونی N2 - A procedure for detecting outliers in regression problems is proposed. It is based on information provided by boosting regression trees. The key idea is to select the most frequently resampled observation along the boosting iterations and reiterate after removing it. The selection criterion is based on Tchebychev’s inequality applied to the maximum over the boosting iterations of the average number of appearances in bootstrap samples. So the procedure is noise distribution free. It allows to select outliers as particularly hard to predict observations. A lot of well-known bench data sets are considered and a comparative study against two well-known competitors allows to show the value of the method. SP - 1 EP - 22 AU - Chèze, Nathalie AU - Poggi, Jean-Michel AD - KW - Boosting KW - CART KW - outlier KW - regression. UR - http://jsri.srtc.ac.ir/article-1-163-en.html DO - 10.18869/acadpub.jsri.3.1.1 ER -