Wed 7 Nov 2018 15:30 - 15:52 at Horizons 6-9F - Mining Chair(s): Hridesh Rajan

Literature reviews can be time-consuming and tedious to complete. By cataloging and refactoring three state-of-the-art active learning techniques from evidence-based medicine and legal electronic discovery, this paper finds and implements FASTREAD, a faster technique for studying a large corpus of documents, combining and parametrizing the most efficient active learning algorithms. This paper assesses FASTREAD using datasets generated from existing SE literature reviews (Hall, Wahono, Radjenović, Kitchenham et al.). Compared to manual methods, FASTREAD lets researchers find 95% relevant studies after reviewing an order of magnitude fewer papers. Compared to other state-of-the-art automatic methods, FASTREAD reviews 20–50% fewer studies while finding same number of relevant primary studies in a systematic literature review.

Wed 7 Nov

Displayed time zone: Guadalajara, Mexico City, Monterrey change

15:30 - 17:00
MiningJournal-First / Research Papers at Horizons 6-9F
Chair(s): Hridesh Rajan Iowa State University
15:30
22m
Talk
Finding Better Active Learners for Faster Literature Reviews
Journal-First
Zhe Yu , Nicholas A. Kraft ABB Corporate Research, Tim Menzies North Carolina State University
DOI
15:52
22m
Talk
Mining Semantic Loop Idioms
Journal-First
Miltiadis Allamanis Microsoft Research, Cambridge, Earl T. Barr University College London, Christian Bird Microsoft Research, Prem Devanbu University of California, Mark Marron Microsoft Research, Charles Sutton University of Edinburgh
DOI
16:15
22m
Talk
NAR-Miner: Discovering Negative Association Rules from Code for Bug Detection
Research Papers
Pan Bian Renmin University of China, China, Bin Liang Renmin University of China, China, Wenchang Shi Renmin University of China, China, Jianjun Huang Renmin University of China, China, Yan Cai Institute of Software, Chinese Academy of Sciences
16:37
22m
Talk
Path-Based Function Embedding and Its Application to Error-Handling Specification Mining
Research Papers
Daniel DeFreez University of California, Davis, Aditya V. Thakur University of California, Davis, Cindy Rubio-González University of California, Davis