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Feature Detection in fMRI Data: The Information Bottleneck Approach

机译:fMRI数据中的特征检测:信息瓶颈方法

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摘要

Clustering is a well-known technique for the analysis of fMRI data, whose main advantage is certainly flexibility: given a metric on the dataset, it defines the main features contained in the data. But intrinsic to this approach are also the problem of defining correctly the quantization accuracy, and the number of clusters necessary to describe the data. The Information Bottleneck (IB) approach to vector quantization addresses these difficulties: 1) it deals with an explicit tradeoff between quantization and data fidelity; 2) it does so during the clustering procedure and not post hoc; 3) it takes into account the statistical distribution of the features within the feature space and not only their most likely value; last, it is principled through an information theoretic formulation, which is relevant in many situations. In this paper, we present how to benefit from this method to analyze fMRI data. Our application is the clustering of voxels according to the magnitude of their responses to several experimental conditions. The IB quantization provides a consistent representation of the data, allowing for an easy interpretation.
机译:聚类是用于fMRI数据分析的众所周知的技术,其主要优势当然是灵活性:给定数据集上的度量标准,它可以定义数据中包含的主要特征。但是这种方法的内在问题还在于正确定义量化精度以及描述数据所需的簇数的问题。用于矢量量化的信息瓶颈(IB)方法解决了以下难题:1)处理量化和数据保真度之间的显式权衡; 2)在集群过程中这样做,而不是事后进行; 3)考虑到特征在特征空间内的统计分布,而不仅仅是其最可能的值;最后,它是通过信息理论表述来实现的,该理论在许多情况下都是相关的。在本文中,我们介绍了如何受益于这种方法来分析fMRI数据。根据体素对几种实验条件的响应程度,我们的应用是体素的聚类。 IB量化提供了数据的一致表示,从而易于解释。

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