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Padhraic Smyth

Researcher at University of California, Irvine

Publications -  359
Citations -  38795

Padhraic Smyth is an academic researcher from University of California, Irvine. The author has contributed to research in topics: Inference & Topic model. The author has an hindex of 80, co-authored 342 publications receiving 36653 citations. Previous affiliations of Padhraic Smyth include University of California & Jet Propulsion Laboratory.

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The Author-Topic Model for Authors and Documents

TL;DR: The Author-Topic model as mentioned in this paper is a generative model for documents that extends Latent Dirichlet Allocation (LDA) to include authorship information, where each document with multiple authors is modeled as a distribution over topics that is a mixture of the distributions associated with the authors.
Journal ArticleDOI

Discrete recurrent neural networks for grammatical inference

TL;DR: A novel neural architecture for learning deterministic context-free grammars, or equivalently, deterministic pushdown automata is described, and a composite error function is described to handle the different situations encountered in learning.
Proceedings ArticleDOI

Probabilistic modeling of transaction data with applications to profiling, visualization, and prediction

TL;DR: This paper evaluates several variations of the proposed probabilistic mixture model on a large retail transaction data set and shows that the proposed model provides improved predictive power over simpler histogram-based techniques, as well as being relatively scalable, interpretable, and flexible.
Book ChapterDOI

Modeling Documents by Combining Semantic Concepts with Unsupervised Statistical Learning

TL;DR: A probabilistic modeling framework that combines both human-defined concepts and data-driven topics in a principled manner is proposed that leads to better language models than can be obtained with either alone.
Proceedings Article

Dynamic Egocentric Models for Citation Networks

TL;DR: A dynamic egocentric framework that models continuous-time network data using multivariate counting processes is introduced and an efficient partial likelihood approach is used, allowing the methods to scale to large networks.