| email: | de_agarwal (at) yahoo (dot) co (dot) in |
| organization: | Yahoo Research |
| homepage: | http://research.yahoo.com/bouncer_user/25 |
| search externally: | Google Schoolar, CiteSeer, Live Search Academic, DBlife, Scirus |
Description
Deepak Agarwal is currently a senior research scientist at Yahoo!
Research. Prior to joining Yahoo!, he was a member of the statistics
department at AT&T Research.
He obtained a Ph.D in statistics from the University of Connecticut
under the guidance of Professor Alan Gelfand. At AT&T, he worked on
methods for mining massive graphs, statistical models for social
network analysis, anomaly detection using a time series approach and
computational approaches for scaling spatial scan statistic to large
data sets.
His current research interests at Yahoo! include large scale regression
for massive, sparse and noisy data via "feature aggregation", anomaly
detection in high dimensional spaces, multi-armed bandit problems for
learning taxonomies and statistical methods for social network
analysis.
Deepak won a best research paper award at Joint Statistical Meetings
2001 for his thesis work which studied deforestation patterns in
Madagascar using a two-stage spatial regression model, the best
applications paper award at Siam Data Mining 2004 for his Bayesian
modeling work on large sparse social networks via stochastic
blockmodels and more recently the best research paper award at KDD 2007
for his work that propose a general class of models for large sparse
dyadic data. He regularly serves on program committees of prestigious
data mining conferences like KDD, SDM and has organized several invited
sessions at Joint Statistical Meetings. He thrives working on applied
statistical problems that involve analyzing massive amounts of data.
Lecture:
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Predictive Discrete Latent Factor Models for Large Scale Dyadic Data
as author at The 13th International Conference on Knowledge Discovery and Data Mining, 146 views |
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