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Keynote Speaker-2: Approximate Feature Selection in Data-Driven Systems Modelling

机译:主题演讲者2:数据驱动系统建模中的近似特征选择

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摘要

Summary form only given. Feature selection (FS) addresses the problem of selecting those system descriptors that are most predictive of a given outcome. Unlike other dimensionality reduction methods, with FS the original meaning of the features is preserved. This has found application in tasks that involve datasets containing very large numbers of features that might otherwise be impractical to model and process (e.g., large-scale image analysis, text processing and Web content classification). This talk will focus on the development and application of approximate FS mechanisms based on rough and fuzzy-rough theories. Such techniques provide a means by which data can be effectively reduced without the need for user-supplied information. In particular, fuzzy-rough feature selection (FRFS) works with discrete and real-valued noisy data (or a mixture of both). As such, it is suitable for regression as well as for classification. The only additional information required is the fuzzy partition for each feature, which can be automatically derived from the data. FRFS has been shown to be a powerful technique for data dimensionality reduction. In introducing the general background of FS, this talk will first cover the rough-set-based approach, before focusing on FRFS and its application to real-world problems. The talk will conclude with an outline of opportunities for further development.
机译:仅提供摘要表格。特征选择(FS)解决了选择那些最能预测给定结果的系统描述符的问题。与其他降维方法不同,使用FS可以保留特征的原始含义。这已发现在涉及包含大量特征的数据集的任务中应用,这些特征否则可能无法建模和处理(例如,大规模图像分析,文本处理和Web内容分类)。本讲座将重点讨论基于粗糙和模糊粗糙理论的近似FS机制的开发和应用。这样的技术提供了一种方法,通过该方法可以有效地减少数据,而无需用户提供信息。特别是,模糊粗糙特征选择(FRFS)可用于离散和实值的噪点数据(或两者的混合)。这样,它既适用于回归也适用于分类。所需的唯一附加信息是每个功能的模糊分区,可以从数据中自动得出该分区。 FRFS已被证明是减少数据维数的强大技术。在介绍FS的一般背景时,本讲座将首先介绍基于粗糙集的方法,然后重点介绍FRFS及其在实际问题中的应用。演讲的结尾将概述进一步发展的机会。

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