Title
CEDARS: Combined exploratory data analysis recommender system
Abstract
We present a framework for recommender systems (RS) to support exploratory data analysis (EDA) in analytical decision making. EDA helps the domain expert, often not a statistical expert, discover interesting relationships between variables and thus be motivated to explain the data. By capturing the behavior of expert analysts in EDA, RS could advise domain experts of ¿standard¿ analytical operations and suggest operations novel to the domain but consistent in analytical goals with requested operations. We enhance our framework with rules that encapsulate standard analytical practice and by incorporating user preferences. We present a scalable framework architecture, which we implemented in a prototype system, and discuss two use cases where the prototype was exercised, analyzing data from image analysis and analyzing eye tracking data.
Year
DOI
Venue
2015
10.1109/LDAV.2015.7348087
LDAV
Keywords
Field
DocType
H.5.2 [Information Interfaces and Presentation]: User Interfaces — Graphical user interfaces,I.2.6 [Artificial Intelligence]: Learning — Concept learning
Recommender system,Architecture,Use case,Subject-matter expert,Computer science,Eye tracking,Human–computer interaction,Exploratory data analysis,Scalability
Conference
ISSN
Citations 
PageRank 
2373-7514
0
0.34
References 
Authors
2
5
Name
Order
Citations
PageRank
Mark A. Livingston139933.58
Stephen Russell200.34
Jonathan W. Decker3717.60
Eric Leadbetter400.34
Antonio Gilliam500.34