REMIX: Automated Exploration for Interactive Outlier Detection
Yanjie Fu, Charu Aggarwal, Srinivasan Parthasarathy, Deepak S. Turaga,, Hui Xiong

TL;DR
REMIX is an interactive system that automatically explores diverse outlier detection methods within a time limit, helping analysts gain comprehensive insights efficiently.
Contribution
It introduces a novel mixed integer programming approach for automatic, diverse outlier detector selection in interactive outlier analysis.
Findings
Effective in exploring diverse outlier sets within time constraints
Provides intuitive visualizations of detector perspectives
Enables ensemble outlier scoring for improved detection
Abstract
Outlier detection is the identification of points in a dataset that do not conform to the norm. Outlier detection is highly sensitive to the choice of the detection algorithm and the feature subspace used by the algorithm. Extracting domain-relevant insights from outliers needs systematic exploration of these choices since diverse outlier sets could lead to complementary insights. This challenge is especially acute in an interactive setting, where the choices must be explored in a time-constrained manner. In this work, we present REMIX, the first system to address the problem of outlier detection in an interactive setting. REMIX uses a novel mixed integer programming (MIP) formulation for automatically selecting and executing a diverse set of outlier detectors within a time limit. This formulation incorporates multiple aspects such as (i) an upper limit on the total execution time of…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Water Systems and Optimization · Machine Learning and Data Classification
MethodsHeatmap
