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https://hdl.handle.net/20.500.14279/12013
Title: | Latent subspace modeling of sequential data under the maximum entropy discrimination framework | Authors: | Chatzis, Sotirios P. | Major Field of Science: | Engineering and Technology | Field Category: | Computer and Information Sciences | Keywords: | Hidden Markov models;Large-margin principle;Maximum-entropy discrimination;Mean-field inference;Latent variable representation | Issue Date: | 27-Oct-2018 | Source: | Neurocomputing, 2018, vol. 312, pp. 210-217 | Volume: | 312 | Start page: | 210 | End page: | 217 | Journal: | Neurocomputing | Abstract: | Hidden Markov models (HMMs) are a popular approach for modeling continuous sequential data, typically based on the assumption of Gaussian-distributed observations. A significant issue HMMs with Gaussian conditional densities are confronted with concerns effectively modeling high-dimensional observations, without getting prone to overfitting or singularities. To this end, one can resort to extracting lower-dimensional latent variable representations of the observed high-dimensional data, as part of the inference algorithm of the postulated HMM. Factor analysis (FA) is a well-established linear latent variable scheme that can be employed for this purpose; its functionality consists in modeling the covariances between the elements of multivariate observations under a set of linear assumptions. Recently, it has been proposed that FA can be effectively generalized under an efficient large-margin Bayesian inference perspective, namely maximum entropy discrimination (MED). This work capitalizes on these recent findings to derive an effective HMM-driven sequential data modeling framework for high-dimensional data. Our proposed approach extracts lower-dimensional latent variable representations of observed high-dimensional data, taking into account the large-margin principle. On this basis, it postulates that the data temporal dynamics are conditional to the inferred values of these latent variables. We devise efficient mean-field inference algorithms for our model, and exhibit its advantages through a set of experiments. | ISSN: | 09252312 | DOI: | 10.1016/j.neucom.2018.05.101 | Rights: | © Elsevier | Type: | Article | Affiliation : | Cyprus University of Technology | Publication Type: | Peer Reviewed |
Appears in Collections: | Άρθρα/Articles |
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