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Citations
•Proceedings Article
Kernel Topic Models
Philipp Hennig,David Stern,Ralf Herbrich,Thore Graepel +3 more
- 21 Mar 2012
TL;DR: An approximate algorithm cast around a Laplace approximation in a transformed basis is presented, which allows documents to be associated with elements of a Hilbert space, admitting kernel topic models (KTM), modelling temporal, spatial, hierarchical, social and other structure between documents.
•Posted Content
Topic Modeling the Reading and Writing Behavior of Information Foragers.
TL;DR: This dissertation presents several case studies that demonstrate how reading and writing behaviors interact to construct personal knowledge bases and reveals the interplay between individual and collective phenomena where innovation takes place.
Toward understanding 17th century English culture: A structural topic model of Francis Bacon's ideas
Peter Grajzl,Peter Murrell +1 more
TL;DR: The authors used machine learning methods to study the features and origins of the ideas of Francis Bacon, a key figure who provided the intellectual roots of a cultural paradigm that spurred modern economic development.
Common visual pattern discovery and search
Zhenzhen Wang,Jingjing Meng,Tan Yu,Junsong Yuan +3 more
- 01 Dec 2017
TL;DR: This paper revisits the representative studies on discovering visual patterns and discusses these methods from the view of local-feature-based and object- proposal-based visual patterns.
Who Says What with Whom: Using Bi-Spectral Clustering to Organize and Analyze Social Media Protest Networks
Kenneth Joseph,Ryan J. Gallagher,Brooke Foucault Welles +2 more
- 01 Oct 2020
TL;DR: This work demonstrates how bi-spectral clustering can be quickly and iteratively applied to sort, sample, and extract ideologically and thematically coherent clusters from a large Twitter network.
References
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Inference of population structure using multilocus genotype data
TL;DR: Pritch et al. as discussed by the authors proposed a model-based clustering method for using multilocus genotype data to infer population structure and assign individuals to populations, which can be applied to most of the commonly used genetic markers, provided that they are not closely linked.
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Monte Carlo Statistical Methods
Christian P. Robert,George Casella +1 more
- 01 Jan 1999
TL;DR: This new edition contains five completely new chapters covering new developments and has sold 4300 copies worldwide of the first edition (1999).
Finding scientific topics
TL;DR: A generative model for documents is described, introduced by Blei, Ng, and Jordan, and a Markov chain Monte Carlo algorithm is presented for inference in this model, which is used to analyze abstracts from PNAS by using Bayesian model selection to establish the number of topics.