A Unified Energy-Based Framework for Unsupervised Learning
نویسندگان
چکیده
We introduce a view of unsupervised learning that integrates probabilistic and nonprobabilistic methods for clustering, dimensionality reduction, and feature extraction in a unified framework. In this framework, an energy function associates low energies to input points that are similar to training samples, and high energies to unobserved points. Learning consists in minimizing the energies of training samples while ensuring that the energies of unobserved ones are higher. Some traditional methods construct the architecture so that only a small number of points can have low energy, while other methods explicitly “pull up” on the energies of unobserved points. In probabilistic methods the energy of unobserved points is pulled by minimizing the log partition function, an expensive, and sometimes intractable process. We explore different and more efficient methods using an energy-based approach. In particular, we show that a simple solution is to restrict the amount of information contained in codes that represent the data. We demonstrate such a method by training it on natural image patches and by applying to image denoising.
منابع مشابه
Statistical machine learning for data mining and collaborative multimedia retrieval
of thesis entitled: Statistical Machine Learning for Data Mining and Collaborative Multimedia Retrieval Submitted by HOI, Chu Hong (Steven) for the degree of Doctor of Philosophy at The Chinese University of Hong Kong in September 2006 Statistical machine learning techniques have been widely applied in data mining and multimedia information retrieval. While traditional methods, such as supervis...
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