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Boosting with Side Information

机译:促进侧面信息

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In many problems of machine learning and computer vision, there exists side information, i.e., information contained in the training data and not available in the testing phase. This motivates the recent development of a new learning approach known as learning with side information that aims to incorporate side information for improved learning algorithms. In this work, we describe a new training method of boosting classifiers that uses side information, which we term as AdaBoost+. In particular, AdaBoost+ employs a novel classification label imputation method to construct extra weak classifiers from the available information that simulate the performance of better weak classifiers obtained from the features in side information. We apply our method to two problems, namely handwritten digit recognition and facial expression recognition from low resolution images, where it demonstrates its effectiveness in classification performance.
机译:在机器学习和计算机视觉的许多问题中,存在侧面信息,即培训数据中包含的信息,在测试阶段中不可用。这激励了最近的一种新的学习方法,称为具有侧面信息的学习,该方法旨在结合改进的学习算法的侧面信息。在这项工作中,我们描述了一种促进使用侧面信息的分类器的新培训方法,我们将其作为Adaboost + +。特别地,Adaboost +采用了一种新颖的分类标签归档方法来构造来自模拟从侧面信息中的特征获得的更好弱分类器的性能的可用信息来构建额外的弱分类器。我们将方法应用于两个问题,即手写的数字识别和来自低分辨率图像的面部表情识别,在那里它证明了其在分类性能方面的有效性。

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