Nalazite se na CroRIS probnoj okolini. Ovdje evidentirani podaci neće biti pohranjeni u Informacijskom sustavu znanosti RH. Ako je ovo greška, CroRIS produkcijskoj okolini moguće je pristupi putem poveznice www.croris.hr
izvor podataka: crosbi

Defect prediction from static code features: current results, limitations, new approaches (CROSBI ID 165202)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Menzies, Tim ; Milton, Zach ; Turhan, Burak ; Čukić, Bojan ; Jiang, Yue ; Bener, Ayse Defect prediction from static code features: current results, limitations, new approaches // Automated software engineering, 17 (2010), 4; 375-407. doi: 10.1007/s10515-010-0069-5

Podaci o odgovornosti

Menzies, Tim ; Milton, Zach ; Turhan, Burak ; Čukić, Bojan ; Jiang, Yue ; Bener, Ayse

engleski

Defect prediction from static code features: current results, limitations, new approaches

Building quality software is expensive and software quality assurance (QA) budgets are limited. Data miners can learn defect predictors from static code features which can be used to control QA resources ; e.g. to focus on the parts of the code predicted to be more defective. Recent results show that better data mining technology is not leading to better defect predictors. We hypothesize that we have reached the limits of the standard learning goal of maximizing area under the curve (AUC) of the probability of false alarms and probability of detection “AUC(pd, pf)” ; i.e. the area under the curve of a probability of false alarm versus probability of detection. Accordingly, we explore changing the standard goal. Learners that maximize “AUC(effort, pd)” find the smallest set of modules that contain the most errors. WHICH is a meta-learner framework that can be quickly customized to different goals. When customized to AUC(effort, pd), WHICH out-performs all the data mining methods studied here. More importantly, measured in terms of this new goal, certain widely used learners perform much worse than simple manual methods. Hence, we advise against the indiscriminate use of learners. Learners must be chosen and customized to the goal at hand. With the right architecture (e.g. WHICH), tuning a learner to specific local business goals can be a simple task.

defect prediction; static code features; WHICH

nije evidentirano

nije evidentirano

nije evidentirano

nije evidentirano

nije evidentirano

nije evidentirano

Podaci o izdanju

17 (4)

2010.

375-407

objavljeno

0928-8910

10.1007/s10515-010-0069-5

Povezanost rada

Računarstvo

Poveznice
Indeksiranost