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Feature Set Search Space for PuzzyBoost Learning

机译:用于PuzzyBoost学习的功能集搜索空间

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This paper presents a novel approach to the weak classifier selection based on the GentleBoost framework, based on sharing a set of features at each round. We explore the use of linear dimensionality reduction methods to guide the search for features that share some properties, such as correlations and discriminative properties. We add this feature set as a new parameter of the decision stump, which turns the single branch selection of the classic stump into a fuzzy decision that weights the contribution of both branches. The weights of each branch act as a confidence measure based on the feature set characteristics, which increases the accuracy and robustness to data perturbations. We propose an algorithm that consider the similarities between the weights provided by three linear mapping algorithms: PCA, LDA and MMLMNN [14]. We propose to analyze the row vectors of the linear mapping, grouping vector components with very similar values. Then, the created groups are the inputs of the FuzzyBoost algorithm. This search procedure generalizes the previous temporal FuzzyBoost [10] to any type of features. We present results in features with spatial support (images) and spatio-temporal support (videos), showing the generalization properties of the FuzzyBoost algorithm in other scenarios.
机译:本文提出了一种基于GentleBoost框架的弱分类器选择的新方法,该方法基于在每一轮共享一组功能。我们探索使用线性降维方法来指导对具有某些属性(例如相关性和判别属性)的特征的搜索。我们将此功能集添加为决策树桩的新参数,这会将经典树桩的单个分支选择转变为加权两个分支的贡献的模糊决策。每个分支的权重充当基于特征集特征的置信度,从而提高了数据扰动的准确性和鲁棒性。我们提出一种考虑三种线性映射算法提供的权重之间相似性的算法:PCA,LDA和MMLMNN [14]。我们建议分析线性映射的行向量,将具有非常相似值的向量分量分组。然后,创建的组是FuzzyBoost算法的输入。该搜索过程将先前的时间FuzzyBoost [10]推广到任何类型的特征。我们在具有空间支持(图像)和时空支持(视频)的要素中呈现结果,显示了FuzzyBoost算法在其他情况下的一般性。

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