Bias-corrected quantile re gression fores ts for high-dimensiona l data

Nguyen Thanh Tungl, Joshua Zhexue Huangl, Thuy Thi Nguyen, Imran Khanl

نتاج البحث: Conference contribution

6 اقتباسات (Scopus)

ملخص

The Quantile Regression Forest (QRF), a nonparametric regression method based on the random forests, has been proved to perform well in terms of prediction accuracy, especially for nonGaussian conditional distributions. However, the method may have two kinds of bias when solving regression problems: bias in the feature selection stage and bias in solving the regression problem. In this paper, we propose a new bias-correction algorithm that uses bias correction based on the QRF. To correct the first kind of bias, we propose a new scheme for feature sampling that allows to select good features for growing trees. The first level QRF is built based on this. For the second kind of bias, the residual term of the first level QRF model is used as the response feature to train the second level QRF model for bias correction. The second level model is then used to compute bias-corrected predictions. In our experiments, the proposedalgorithm dramatically reduces prediction errors and outperforms most of the existing regression random forests models for both synthetic and well-known real-world data sets.

اللغة الأصليةEnglish
عنوان منشور المضيفProceedings of 2014 International Conference on Machine Learning and Cybernetics, ICMLC 2014
ناشرIEEE Computer Society
الصفحات1-6
عدد الصفحات6
رقم المعيار الدولي للكتب (الإلكتروني)9781479942169
المعرِّفات الرقمية للأشياء
حالة النشرPublished - يناير 13 2014
منشور خارجيًانعم
الحدث13th International Conference on Machine Learning and Cybernetics, ICMLC 2014 - Lanzhou, China
المدة: يوليو ١٣ ٢٠١٤يوليو ١٦ ٢٠١٤

سلسلة المنشورات

الاسمProceedings - International Conference on Machine Learning and Cybernetics
مستوى الصوت1
رقم المعيار الدولي للدوريات (المطبوع)2160-133X
رقم المعيار الدولي للدوريات (الإلكتروني)2160-1348

Conference

Conference13th International Conference on Machine Learning and Cybernetics, ICMLC 2014
الدولة/الإقليمChina
المدينةLanzhou
المدة٧/١٣/١٤٧/١٦/١٤

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