Main Topic Lens: Title: Crime Rate Inference with Big Data Authors: Hongjian Wang*, Penn State University Zhenhui L, Penn State University ... Title: Improving Survey Aggregation with Sparsely Represented Signals Authors: Tianlin Shi, Stanford University Forest ...
Kdd 2016 Paper 392 - Resource Where It Fits
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Resource Where It Fits
Title: Unified Point-of-Interest Recommendation with Temporal Interval Assessment Authors: Yanchi Liu*, Rutgers University ... Title: Robust Large-Scale Machine Learning in the Cloud Authors: Steffen Rendle*, Google, Inc.
General Main Overview
Title: Improving Survey Aggregation with Sparsely Represented Signals Authors: Tianlin Shi, Stanford University Forest ... Title: CaSMoS: A Framework for Learning Candidate Selection Models over Structured Queries and Documents Authors: Fedor ... Title : Large-scale Item Categorization in e-Commerce Using Multiple Recurrent Neural Networks Authors : Jung-woo Ha , NAVER ...
General Important Notes
Title : Large-scale Item Categorization in e-Commerce Using Multiple Recurrent Neural Networks Authors : Jung-woo Ha , NAVER ... Title: Revisiting Random Binning Feature: Fast Convergence and Strong Parallelizability Authors: Lingfei Wu*, College of William ...
Browsing Tips for Readers
Title: Crime Rate Inference with Big Data Authors: Hongjian Wang*, Penn State University Zhenhui L, Penn State University ... Organizers: Shipeng Yu, LinkedIn Corporation Mohak Shah, Bosch Research and Technology Center North America Balaji ... Title: Just One More: Modeling Binge Watching Behavior Authors: William Trouleau*, EPFL Azin Ashkan, Technicolor Research ...
Quick reference points
- Title: Crime Rate Inference with Big Data Authors: Hongjian Wang*, Penn State University Zhenhui L, Penn State University ...
- Title: Unified Point-of-Interest Recommendation with Temporal Interval Assessment Authors: Yanchi Liu*, Rutgers University ...
- Title : Large-scale Item Categorization in e-Commerce Using Multiple Recurrent Neural Networks Authors : Jung-woo Ha , NAVER ...
- Title: Revisiting Random Binning Feature: Fast Convergence and Strong Parallelizability Authors: Lingfei Wu*, College of William ...
- Title: Just One More: Modeling Binge Watching Behavior Authors: William Trouleau*, EPFL Azin Ashkan, Technicolor Research ...
- Title: CaSMoS: A Framework for Learning Candidate Selection Models over Structured Queries and Documents Authors: Fedor ...
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