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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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A Scale Mixture Perspective of Multiplicative Noise in Neural Networks

TL;DR: This paper shows that when a Gaussian prior is placed on a DNN's weights, applying multiplicative noise induces aGaussian scale mixture, which can be reparameterized to circumvent the problematic likelihood function.
Journal ArticleDOI

The co-factor of LIM domains (CLIM/LDB/NLI) maintains basal mammary epithelial stem cells and promotes breast tumorigenesis.

TL;DR: The Co-factor of LIM domains (CLIM/LDB/NLI) is identified as a transcriptional regulator that maintains basal mammary stem cells and the Clim-regulated branching morphogenesis gene network, and is a prognostic indicator of poor breast cancer outcome in humans.
Proceedings Article

Gene Expression Clustering with Functional Mixture Models

TL;DR: An EM algorithm is derived for estimating the parameters of the model, and the proposed approach to the set of cycling genes in yeast shows consistent improvement in predictive power and within cluster variance compared to regular Gaussian mixtures.
Book ChapterDOI

Probabilistic analysis of a large-scale urban traffic sensor data set

TL;DR: This paper describes the application of probabilistic modeling and unsupervised learning techniques to this data set and illustrates how these approaches can successfully detect underlying systematic patterns even in the presence of substantial noise and missing data.
Proceedings ArticleDOI

Windows into relational events: data structures for contiguous subsequences of edges

TL;DR: This work provides data structures for social network data sets in which the edges of the network have timestamps that use near-linear preprocessing time, linear space, and sublogarithmic query time to handle queries that ask for the number of connected components, number of components that contain cycles, and related queries.