Rakshit Trivedi
Georgia Institute of Technology
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Publication
Featured researches published by Rakshit Trivedi.
knowledge discovery and data mining | 2016
Nan Du; Hanjun Dai; Rakshit Trivedi; Utkarsh Upadhyay; Manuel Gomez-Rodriguez; Le Song
Large volumes of event data are becoming increasingly available in a wide variety of applications, such as healthcare analytics, smart cities and social network analysis. The precise time interval or the exact distance between two events carries a great deal of information about the dynamics of the underlying systems. These characteristics make such data fundamentally different from independently and identically distributed data and time-series data where time and space are treated as indexes rather than random variables. Marked temporal point processes are the mathematical framework for modeling event data with covariates. However, typical point process models often make strong assumptions about the generative processes of the event data, which may or may not reflect the reality, and the specifically fixed parametric assumptions also have restricted the expressive power of the respective processes. Can we obtain a more expressive model of marked temporal point processes? How can we learn such a model from massive data? In this paper, we propose the Recurrent Marked Temporal Point Process (RMTPP) to simultaneously model the event timings and the markers. The key idea of our approach is to view the intensity function of a temporal point process as a nonlinear function of the history, and use a recurrent neural network to automatically learn a representation of influences from the event history. We develop an efficient stochastic gradient algorithm for learning the model parameters which can readily scale up to millions of events. Using both synthetic and real world datasets, we show that, in the case where the true models have parametric specifications, RMTPP can learn the dynamics of such models without the need to know the actual parametric forms; and in the case where the true models are unknown, RMTPP can also learn the dynamics and achieve better predictive performance than other parametric alternatives based on particular prior assumptions.
north american chapter of the association for computational linguistics | 2013
Rakshit Trivedi; Jacob Eisenstein
international conference on machine learning | 2017
Mehrdad Farajtabar; Jiachen Yang; Xiaojing Ye; Huan Xu; Rakshit Trivedi; Elias B. Khalil; Shuang Li; Le Song; Hongyuan Zha
neural information processing systems | 2016
Yichen Wang; Nan Du; Rakshit Trivedi; Le Song
international conference on machine learning | 2017
Rakshit Trivedi; Hanjun Dai; Yichen Wang; Le Song
conference on recommender systems | 2016
Hanjun Dai; Yichen Wang; Rakshit Trivedi; Le Song
Archive | 2017
Hanjun Dai; Yichen Wang; Rakshit Trivedi; Le Song
international conference on learning representations | 2018
Jiachen Yang; Xiaojing Ye; Rakshit Trivedi; Huan Xu; Hongyuan Zha
meeting of the association for computational linguistics | 2018
Rakshit Trivedi; Bunyamin Sisman; Xin Luna Dong; Christos Faloutsos; Jun Ma; Hongyuan Zha
arXiv: Learning | 2018
Rakshit Trivedi; Mehrdad Farajtabar; Prasenjeet Biswal; Hongyuan Zha