How Many Separable Sources? Model Selection In Independent Components Analysis
نویسندگان
چکیده
Unlike mixtures consisting solely of non-Gaussian sources, mixtures including two or more Gaussian components cannot be separated using standard independent components analysis methods that are based on higher order statistics and independent observations. The mixed Independent Components Analysis/Principal Components Analysis (mixed ICA/PCA) model described here accommodates one or more Gaussian components in the independent components analysis model and uses principal components analysis to characterize contributions from this inseparable Gaussian subspace. Information theory can then be used to select from among potential model categories with differing numbers of Gaussian components. Based on simulation studies, the assumptions and approximations underlying the Akaike Information Criterion do not hold in this setting, even with a very large number of observations. Cross-validation is a suitable, though computationally intensive alternative for model selection. Application of the algorithm is illustrated using Fisher's iris data set and Howells' craniometric data set. Mixed ICA/PCA is of potential interest in any field of scientific investigation where the authenticity of blindly separated non-Gaussian sources might otherwise be questionable. Failure of the Akaike Information Criterion in model selection also has relevance in traditional independent components analysis where all sources are assumed non-Gaussian.
منابع مشابه
Independent Component Analysis Applied to Fmri Data: a Natural Model and Order Selection
We introduce a framework for the application of independent component analysis (ICA) to functional magnetic resonance (fMRI) data. We present a model for the task with two main sections: data generation (synthesis) and data processing (analysis) and give examples of how such a model can be utilized in fMRI analysis. We assume a generative model for the data involving 1) the signal being measure...
متن کاملModel Selection for Convolutive ICA with an Application to Spatiotemporal Analysis of EEG
We present a new algorithm for maximum likelihood convolutive independent component analysis (ICA) in which components are unmixed using stable autoregressive filters determined implicitly by estimating a convolutive model of the mixing process. By introducing a convolutive mixing model for the components, we show how the order of the filters in the model can be correctly detected using Bayesia...
متن کاملIdentifying the components of the Information Resource Selection Behavior of the Members of Public Libraries Using Metasynthesis
Purpose: It is impossible to increase the use of information resources in libraries and provide user-centered information services without understanding how users select and search for information resources. selecting information sources involves identifying a subset of available information sources that best meet the information needs of users. Selecting the right source of information has a s...
متن کاملتأثیر رضامندی و استرس شغلی در شیوه بهکارگیری راهبردهای مدیریت تعارضکتابداران نهاد کتابخانههای عمومیکشور
Purpose: We have studied in the present research the role of occupational stress and job expectation in following the conflict management strategies among librarians of Iran Public Libraries Foundation. Methodology: This study used correlation analysis and is a survey. Through simple random selection, 115 librarians were chosen among librarians of Iran public libraries Foundation. They filled...
متن کاملModel of Process Critique of Contemporary Residential Works Based on the components: "Mission, Objectives, Functional Needs and Concepts
The formation of a designer's personality and the acquisition of design skills are dependent on specific components and variables, such as observation and sampling, analysis and handling of samples, direct involvement and impregnation with the design problem. Architectural critique and analysis of the works of the past and successful and unsuccessful examples have always played a key role in ar...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره 10 شماره
صفحات -
تاریخ انتشار 2015