Xiangnan_KDD_Debrief

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KDD’14 Debrief

24 th April - 27 st August, 2014 New York City, US WING Monthly Meeting (Oct 24, 2014) Presented by Xiangnan He

Open Ceremony

2

Welcome Words

“Donot spend your precious time asking ‘Why isn’t the world a better place?’ It will only be time wasted.

The question to ask is ‘How can I make it better?’ To that there is an answer.“

--- Leo Buscaglia

Overview

The largest KDD conference ever.

 Number of attendees: 2200 + (last year is 1176).

    151 Research papers (20% growth over KDD’13), a 43 industry & govt. papers (30% growth) 26 workshops (75% growth) 12 tutorials (100% growth) •

What’s new?

 Paper spotlights every morning (1 min/paper)   All papers are required to have a poster presented.

Networking Session: Building a Career in Data Science

Research Track

Reviewing Process

Submissions per Country

Acceptance by Subject Area

Predicting Paper Acceptance

Predicting Paper Acceptance

Academia VS. Industry

Review Statistics

Review Statistics

Research Topics

• Some technical topics that I found especially notable/popular include:  Topic/Graphical modeling (not only for text mining, many tasks are addressed with this method)     Deep Learning (2 tutorials, but no full papers) Social Networks and graph analytics (popular for the last 10 years, and even more so this year) Recommendations Workforce analytics

Best Paper Awards

Best paper:

Reducing the Sampling Complexity of Topic Models.

Aaron Q Li, Carnegie Mellon University; Amr Ahmed, Sujith Ravi, Alexander J Smola, Google.

Best student paper: An Efficient Algorithm For Weak Hierarchical Lasso

Yashu Liu, Jie Wang, Jieping Ye, Arizona State University,Arizona State University.

Test of Time Award

Integrating Classification and Association Rule

Mining [KDD 1998], cited by over 2000 times.

Some interesting papers

• • •

Mining Topics in Documents: Standing on the Shoulders of Big Data.

Zhiyuan Chen, Bing Liu; University of Illinois at Chicago;

Matching Users and Items Across Domains to Improve the Recommendation Quality.

Chung-Yi Li,Shou-De Lin; National Taiwan University

FoodSIS: A Text Mining System to Improve the State of Food Safety in Singapore

Kiran Kate, Sneha Chaudhari, Andy Prapanca, Jayant Kalagnanam; IBM Research;

Mining Topics in Documents: Standing on the Shoulders of Big Data.

Zhiyuan Chen, Bing Liu; University of Illinois at Chicago; •

Proposed a variant of topic model that can generate more accurate and coherent topics via integrating knowledge.

2 kinds of Knowledge:

  Must-links, e.g. , Cannot-links, e.g. ,

Knowledge are mined through frequent itemset mining.

But knowledge can be wrong, authors further propose some rules to clean up the knowledge.

Knowledge can be easily integrated the into the inference algorithm with generalized Polya Urn Model.

Innovation Award Talk

Principles of Very Large Scale Modeling

by Pedro Domingos, from University of Washington. •

Three principles:

1. Model the whole, not just parts;

  People (customers) influence each other - model the whole network, not each person separately.

2. Tame complexity via hierarchical decomposition;

We can make 2 assumptions: 1) Subparts are independent given the part; 2) Probability for class is the avg over subclasses. Using hierarchy and 2 previous assumptions makes our inference tractable.

Example: Markov Logic Network + Sum-Product Theorem = Tractable Markov Log

3. Time and space should not depend on data size.

THANK YOU!

Video recordings of KDD: http://videolectures.net/kdd2014_newyork/