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Featured researches published by H. H. Bui.


international joint conference on artificial intelligence | 2017

Large-scale online kernel learning with random feature reparameterization

Tu Dinh Nguyen; Trung Le; H. H. Bui; Dinh Q. Phung

A typical online kernel learning method faces two fundamental issues: the complexity in dealing with a huge number of observed data points (a.k.a the curse of kernelization) and the difficulty in learning kernel parameters, which often assumed to be fixed. Random Fourier feature is a recent and effective approach to address the former by approximating the shift-invariant kernel function via Bocher’s theorem, and allows the model to be maintained directly in the random feature space with a fixed dimension, hence the model size remains constant w.r.t. data size. We further introduce in this paper the reparameterized random feature (RRF), a random feature framework for large-scale online kernel learning to address both aforementioned challenges. Our initial intuition comes from the so-called ‘reparameterization trick’ [Kingma and Welling, 2014] to lift the source of randomness of Fourier components to another space which can be independently sampled, so that stochastic gradient of the kernel parameters can be analytically derived. We develop a well-founded underlying theory for our method, including a general way to reparameterize the kernel, and a new tighter error bound on the approximation quality. This view further inspires a direct application of stochastic gradient descent for updating our model under an online learning setting. We then conducted extensive experiments on several large-scale datasets where we demonstrate that our work achieves state-of-the-art performance in both learning efficacy and efficiency.


international conference on intelligent sensors, sensor networks and information processing | 2005

Efficient Coxian Duration Modelling for Activity Recognition in Smart Environments with the Hidden semi-Markov Model

Thi V. Duong; Dinh Q. Phung; H. H. Bui; Svetha Venkatesh

In this paper, we exploit the discrete Coxian distribution and propose a novel form of stochastic model, termed as the Coxian hidden semi-Makov model (Cox-HSMM), and apply it to the task of recognising activities of daily living (ADLs) in a smart house environment. The use of the Coxian has several advantages over traditional parameterization (e.g. multinomial or continuous distributions) including the low number of free parameters needed, its computational efficiency, and the existing of closed-form solution. To further enrich the model in real-world applications, we also address the problem of handling missing observation for the proposed Cox-HSMM. In the domain of ADLs, we emphasize the importance of the duration information and model it via the Cox-HSMM. Our experimental results have shown the superiority of the Cox-HSMM in all cases when compared with the standard HMM. Our results have further shown that outstanding recognition accuracy can be achieved with relatively low number of phases required in the Coxian, thus making the Cox-HSMM particularly suitable in recognizing ADLs whose movement trajectories are typically very long in nature.


international joint conference on artificial intelligence | 2017

Discriminative Bayesian Nonparametric Clustering

Vu Nguyen; Dinh Q. Phung; Trung Le; H. H. Bui

We propose a general framework for discriminative Bayesian nonparametric clustering to promote the inter-discrimination among the learned clusters in a fully Bayesian nonparametric (BNP) manner. Our method combines existing BNP clustering and discriminative models by enforcing latent cluster indices to be consistent with the predicted labels resulted from probabilistic discriminative model. This formulation results in a well-defined generative process wherein we can use either logistic regression or SVM for discrimination. Using the proposed framework, we develop two novel discriminative BNP variants: the discriminative Dirichlet process mixtures, and the discriminative-state infinite HMMs for sequential data. We develop efficient data-augmentation Gibbs samplers for posterior inference. Extensive experiments in image clustering and dynamic location clustering demonstrate that by encouraging discrimination between induced clusters, our model enhances the quality of clustering in comparison with the traditional generative BNP models.


neural information processing systems | 2008

Hierarchical Semi-Markov Conditional Random Fields for Recursive Sequential Data

Tran Truyen; Dinh Q. Phung; H. H. Bui; Svetha Venkatesh


intelligent information systems | 1995

A multi-agent incremental negotiation scheme for meetings scheduling

H. H. Bui; Svetha Venkatesh; Dorota H. Kieronska


national conference on artificial intelligence | 1996

Negotiating agents that learn about others' preferences

H. H. Bui; Dorota H. Kieronska; Svetha Venkatesh


AI 2001 : Proceedings of the IASTED International Symposia, Applied Informatics : artificial intelligence and applications, advances incomputer applications : February 19-22, 2001, Innsbruck, Austria | 2001

Tracking concept drift robustly

Mihai Lazarescu; Svetha Venkatesh; H. H. Bui


Proceedings of the IASTED International Symposia, Applied Informatics : artificial intelligence &​ applications, advances in computer applications | 2001

An application of concept drift tracking to average frame interpretation

Mihai Lazarescu; Svetha Venkatesh; H. H. Bui


digital image computing techniques and applications | 1999

Probabilistic querying at multiple levels of abstraction in large spatial domains

H. H. Bui; Svetha Venkatesh; Geoff A. W. West


international conference on intelligent information processing | 1995

Constructing hierarchical abstraction for qualitative representations of space and time

H. H. Bui; Svetha Venkatesh; Dorota H. Kieronska

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