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基于张量的多视图特征选择及其在脑部疾病中的应用

Tensor-based Multi-view Feature Selection with Applications to Brain Diseases.

作者信息

Cao Bokai, He Lifang, Kong Xiangnan, Yu Philip S, Hao Zhifeng, Ragin Ann B

机构信息

Department of Computer Science, University of Illinois at Chicago, IL, USA.

Department of Computer Science, University of Illinois at Chicago, IL, USA ; Department of Computer Science, Guangdong University of Technology, Guangzhou, China.

出版信息

Proc IEEE Int Conf Data Min. 2014 Dec;2014:40-49. doi: 10.1109/ICDM.2014.26.

Abstract

In the era of big data, we can easily access information from multiple views which may be obtained from different sources or feature subsets. Generally, different views provide complementary information for learning tasks. Thus, multi-view learning can facilitate the learning process and is prevalent in a wide range of application domains. For example, in medical science, measurements from a series of medical examinations are documented for each subject, including clinical, imaging, immunologic, serologic and cognitive measures which are obtained from multiple sources. Specifically, for brain diagnosis, we can have different quantitative analysis which can be seen as different feature subsets of a subject. It is desirable to combine all these features in an effective way for disease diagnosis. However, some measurements from less relevant medical examinations can introduce irrelevant information which can even be exaggerated after view combinations. Feature selection should therefore be incorporated in the process of multi-view learning. In this paper, we explore tensor product to bring different views together in a joint space, and present a dual method of tensor-based multi-view feature selection (dual-Tmfs) based on the idea of support vector machine recursive feature elimination. Experiments conducted on datasets derived from neurological disorder demonstrate the features selected by our proposed method yield better classification performance and are relevant to disease diagnosis.

摘要

在大数据时代,我们能够轻松地从多个视角获取信息,这些信息可能来自不同的来源或特征子集。一般来说,不同的视角为学习任务提供互补信息。因此,多视角学习能够促进学习过程,并且在广泛的应用领域中普遍存在。例如,在医学领域,为每个受试者记录了一系列医学检查的测量结果,包括从多个来源获得的临床、成像、免疫、血清学和认知测量。具体而言,对于脑部诊断,我们可以进行不同的定量分析,这些分析可被视为一个受试者的不同特征子集。期望以一种有效的方式组合所有这些特征以进行疾病诊断。然而,一些来自不太相关的医学检查的测量可能会引入不相关信息,甚至在视角组合后这些信息可能会被放大。因此,在多视角学习过程中应纳入特征选择。在本文中,我们探索张量积以在联合空间中将不同视角结合在一起,并基于支持向量机递归特征消除的思想提出一种基于张量的多视角特征选择的对偶方法(dual-Tmfs)。在源自神经疾病的数据集上进行的实验表明,我们提出的方法选择的特征产生了更好的分类性能,并且与疾病诊断相关。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cd22/4415282/fa1fd40a25b2/nihms683152f1.jpg

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