Abhimanu Kumar
Carnegie Mellon University
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Publication
Featured researches published by Abhimanu Kumar.
siam international conference on data mining | 2014
Alex Beutel; Partha Pratim Talukdar; Abhimanu Kumar; Christos Faloutsos; Evangelos E. Papalexakis; Eric P. Xing
Given multiple data sets of relational data that share a number of dimensions, how can we efficiently decompose our data into the latent factors? Factorization of a single matrix or tensor has attracted much attention, as, e.g., in the Netflix challenge, with users rating movies. However, we often have additional, side, information, like, e.g., demographic data about the users, in the Netflix example above. Incorporating the additional information leads to the coupled factorization problem. So far, it has been solved for relatively small datasets. We provide a distributed, scalable method for decomposing matrices, tensors, and coupled data sets through stochastic gradient descent on a variety of objective functions. We offer the following contributions: (1) Versatility: Our algorithm can perform matrix, tensor, and coupled factorization, with flexible objective functions including the Frobenius norm, Frobenius norm with an `1 induced sparsity, and non-negative factorization. (2) Scalability: FlexiFaCT scales to unprecedented sizes in both the data and model, with up to billions of parameters. FlexiFaCT runs on standard Hadoop. (3) Convergence proofs showing that FlexiFaCT converges on the variety of objective functions, even with projections.
IEEE Transactions on Big Data | 2015
Eric P. Xing; Qirong Ho; Wei Dai; Jin Kyu Kim; Jinliang Wei; Seunghak Lee; Xun Zheng; Pengtao Xie; Abhimanu Kumar; Yaoliang Yu
usenix annual technical conference | 2014
Henggang Cui; James Cipar; Qirong Ho; Jin Kyu Kim; Seunghak Lee; Abhimanu Kumar; Jinliang Wei; Wei Dai; Gregory R. Ganger; Phillip B. Gibbons; Garth A. Gibson; Eric P. Xing
national conference on artificial intelligence | 2015
Wei Dai; Abhimanu Kumar; Jinliang Wei; Qirong Ho; Garth A. Gibson; Eric P. Xing
The International Review of Research in Open and Distributed Learning | 2014
Diyi Yang; Miaomiao Wen; Abhimanu Kumar; Eric P. Xing; Carolyn Penstein Rosé
arXiv: Machine Learning | 2013
Jinliang Wei; Wei Dai; Abhimanu Kumar; Xun Zheng; Qirong Ho; Eric P. Xing
international conference on machine learning | 2017
Pengtao Xie; Yuntian Deng; Yi Zhou; Abhimanu Kumar; Yaoliang Yu; James Zou; Eric P. Xing
arXiv: Learning | 2015
Pengtao Xie; Jin Kyu Kim; Yi Zhou; Qirong Ho; Abhimanu Kumar; Yaoliang Yu; Eric P. Xing
uncertainty in artificial intelligence | 2016
Pengtao Xie; Jin Kyu Kim; Yi Zhou; Qirong Ho; Abhimanu Kumar; Yaoliang Yu; Eric P. Xing
arXiv: Machine Learning | 2015
Abhimanu Kumar; Pengtao Xie; Junming Yin; Eric P. Xing