Exploring Kdd2016 Paper 995

Exploring Kdd2016 Paper 995 reveals several interesting facts.

  • Title: Communication Efficient Distributed Kernel Principal Component Analysis Authors: Yingyu Liang*, Princeton University Bo ...
  • Author: Chang Xu, Peking University Abstract: Tail labels in the multi-label learning problem undermine the low-rank assumption.
  • Title: Deep Crossing: Web-Scale Modeling without Manually Crafted Combinatorial Features Authors: Ying Shan*, Microsoft ...
  • Title: Parallel Lasso Screening for Big Data Optimization Authors: Qingyang Li*, Arizona State University Shuang Qiu, University of ...
  • Title: Improving the Sensitivity of Online Controlled Experiments: Case Studies at Netflix Authors: Huizhi Xie*, Netflix Juliette ...

In-Depth Information on Kdd2016 Paper 995

Title: Robust Extreme Multi-label Learning Authors: Chang Xu*, Peking University Dacheng Tao, University of Technology Sydney ... Title: Improving Survey Aggregation with Sparsely Represented Signals Authors: Tianlin Shi, Stanford University Forest ... Title: Contextual Intent Tracking for Personal Assistants Authors: Yu Sun*, University of Melbourne Nicholas Jing Yuan, Microsoft ... Title: Smart Broadcasting: Do you want to be seen? Authors: Mohammad Reza Karimi*, Sharif University Erfan Tavakoli, Sharif ...

Title: Large-Scale Item Categorization in e-Commerce Using Multiple Recurrent Neural Networks Authors: Jung-Woo Ha*, NAVER ...

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