Thu 8 Nov 2018 11:15 - 11:37 at Horizons 5 - Estimation and Prediction Chair(s): Jim Herbsleb

\textbf{Background:} software effort estimation (SEE) usually suffers from data scarcity problem due to the expensive or long process of data collection. As a result, companies usually have limited data projects for effort estimation, causing unsatisfactory prediction performance. Few studies have investigated strategies to generate additional SEE data to aid such learning.
\textbf{Aim:} to propose a synthetic data generator to address the data scarcity problem of SEE. The proposed approach should be general to be used with any state-of-the-art SEE method. Ideally, it should be simple and hardly have negative effect on SEE performance.
\textbf{Method:} our synthetic generator enlarges the SEE data set size by slightly displacing some randomly chosen training examples. It can be used with any SEE method as a data preprocessor.
Its effectiveness is justified with 6 state-of-the-art SEE models across 14 SEE data sets. We also compare our data generator against the only existing approach in the SEE literature.
\textbf{Results:} our synthetic projects can significantly improve the performance of some SEE methods especially when the training data is insufficient. When they cannot significantly improve the prediction performance, they are not detrimental either.
Besides, our synthetic data generator is significantly superior or perform similarly to its competitor in the SEE literature.
\textbf{Conclusion:} our data generator plays a non-harmful if not significantly beneficial effect on the SEE methods investigated in this paper. Therefore, it is helpful in addressing the data scarcity problem of SEE.

Thu 8 Nov

Displayed time zone: Guadalajara, Mexico City, Monterrey change

10:30 - 12:00
Estimation and PredictionResearch Papers / Journal-First at Horizons 5
Chair(s): Jim Herbsleb Carnegie Mellon University
10:30
22m
Talk
Early prediction of merged code changes to prioritize reviewing tasks
Journal-First
Yuanrui Fan , Xin Xia Monash University, David Lo Singapore Management University, Shanping Li
DOI
10:52
22m
Talk
How far we have progressed in the journey? An examination of cross-project defect prediction
Journal-First
Yuming Zhou , Yibiao Yang Nanjing University, China, Hongmin Lu , Lin Chen Nanjing University, Yanhui Li , Yangyang Zhao , Junyan Qian , Baowen Xu
Link to publication DOI
11:15
22m
Talk
A Novel Automated Approach for Software Effort Estimation Based on Data Augmentation
Research Papers
11:37
22m
Talk
Predicting Node Failure in Cloud Service Systems
Research Papers
Qingwei Lin Microsoft, China, Ken Hsieh , Yingnong Dang Microsoft, USA, Hongyu Zhang The University of Newcastle, Kaixin Sui Microsoft, China, Yong Xu Microsoft, China, Jian-Guang Lou Microsoft Research, Chenggang Li Northeastern University, China, Youjiang Wu Microsoft, USA, Randolph Yao Microsoft, USA, Murali Chintalapati Microsoft, USA, Dongmei Zhang Microsoft Research, China