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An unsupervised feature selection framework for social media data
Jiliang Tang,
Huan Liu
Adaptive Intelligent Materials and Systems Center (AIMS)
Information Assurance Center (IA)
Computer Science and Engineering
Biodesign Institute
Computing and Augmented Intelligence, School of (IAFSE-SCAI)
Research output
:
Contribution to journal
›
Article
›
peer-review
55
Scopus citations
Overview
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Mathematics
Social Media
100%
Feature Selection
74%
Framework
31%
High-dimensional Data
18%
Linked Data
13%
Data Mining
9%
Empirical Study
8%
Relevance
7%
Attribute
7%
Identically distributed
7%
Scenarios
7%
Learning
7%
Evaluate
6%
Experiment
5%
Design
4%
Demonstrate
4%
Engineering & Materials Science
Feature extraction
42%
Linked data
11%
Websites
7%
Labels
7%
Data mining
7%
Experiments
3%