DeepLSH: Deep Locality-Sensitive Hash Learning for Fast and Efficient Near-Duplicate Crash Report Detection
Automatic crash bucketing is a crucial phase in the software development process for efficiently triaging bug reports. It generally consists in grouping similar reports through clustering techniques. However, with real-time streaming bug collection, systems are needed to quickly answer the question: What are the most similar bugs to a new one?, that is, efficiently find near-duplicates. It is thus natural to consider nearest neighbors search to tackle this problem and especially the well-known locality-sensitive hashing (LSH) to deal with large datasets due to its sublinear performance and theoretical guarantees on the similarity search accuracy. Surprisingly, LSH has not been considered in the crash bucketing literature. It is indeed not trivial to derive hash functions that satisfy the so-called locality-sensitive property for the most advanced crash bucketing metrics. Consequently, we study in this paper how to leverage LSH for this task. To be able to consider the most relevant metrics used in the literature, we introduce DeepLSH, a Siamese DNN architecture with an original loss function, that perfectly approximates the locality-sensitivity property even for Jaccard and Cosine metrics for which exact LSH solutions exist. We support this claim with a series of experiments on an original dataset, which we make available.
Wed 17 AprDisplayed time zone: Lisbon change
14:00 - 15:30 | Analytics & AIResearch Track / Journal-first Papers at Sophia de Mello Breyner Andresen Chair(s): Lingming Zhang University of Illinois at Urbana-Champaign | ||
14:00 15mTalk | DeepLSH: Deep Locality-Sensitive Hash Learning for Fast and Efficient Near-Duplicate Crash Report Detection Research Track Youcef REMIL INSA Lyon, INFOLOGIC, Anes Bendimerad Infologic, Romain Mathonat Infologic, Chedy raissi Ubisoft, Mehdi Kaytoue Infologic | ||
14:15 15mTalk | DivLog: Log Parsing with Prompt Enhanced In-Context Learning Research Track Junjielong Xu The Chinese University of Hong Kong, Shenzhen, Ruichun Yang The Chinese University of Hong Kong, Shenzhen, Yintong Huo The Chinese University of Hong Kong, Chengyu Zhang ETH Zurich, Pinjia He Chinese University of Hong Kong, Shenzhen | ||
14:30 15mTalk | Where is it? Tracing the Vulnerability-relevant Files from Vulnerability Reports Research Track Jiamou Sun CSIRO's Data61, Jieshan Chen CSIRO's Data61, Zhenchang Xing CSIRO's Data61, Qinghua Lu Data61, CSIRO, Xiwei (Sherry) Xu Data61, CSIRO, Liming Zhu CSIRO’s Data61 | ||
14:45 15mTalk | Demystifying and Detecting Misuses of Deep Learning APIs Research Track Moshi Wei York University, Nima Shiri Harzevili York University, Yuekai Huang Institute of Software, Chinese Academy of Sciences, Jinqiu Yang Concordia University, Junjie Wang Institute of Software, Chinese Academy of Sciences, Song Wang York University | ||
15:00 7mTalk | Toward Understanding Deep Learning Framework Bugs Journal-first Papers Junjie Chen Tianjin University, Yihua Liang College of Intelligence and Computing, Tianjin University, Qingchao Shen Tianjin University, Jiajun Jiang Tianjin University, Shuochuan Li College of Intelligence and Computing, Tianjin University | ||
15:07 7mTalk | Fair Enough: Searching for Sufficient Measures of Fairness Journal-first Papers Suvodeep Majumder North Carolina State University, Joymallya Chakraborty Amazon.com, Gina Bai North Carolina State University, Kathryn Stolee North Carolina State University, Tim Menzies North Carolina State University DOI Pre-print | ||
15:14 7mTalk | Representation Learning for Stack Overflow Posts: How Far are We? Journal-first Papers Junda He Singapore Management University, Xin Zhou Singapore Management University, Singapore, Bowen Xu North Carolina State University, Ting Zhang Singapore Management University, Kisub Kim Singapore Management University, Singapore, Zhou Yang Singapore Management University, Ferdian Thung Singapore Management University, Ivana Clairine Irsan Singapore Management University, David Lo Singapore Management University | ||
15:21 7mTalk | Journal First: Learning from Very Little Data: On the Value of Landscape Analysis for Predicting Software Project Health) Journal-first Papers DOI Pre-print |