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Augmented Fine-Grained Defect Prediction for Code Review
L. Pascarella
Software Engineering
Research output
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Thesis
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Dissertation (TU Delft)
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Dive into the research topics of 'Augmented Fine-Grained Defect Prediction for Code Review'. Together they form a unique fingerprint.
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INIS
prediction
100%
defects
100%
reviews
100%
information
22%
performance
22%
developers
22%
levels
11%
metrics
11%
profits
11%
feedback
11%
information needs
11%
computer codes
11%
investigations
11%
tools
11%
Engineering
Defects
100%
Prediction
100%
Codes
100%
Reviewer
40%
Models
20%
Research
20%
Prediction Performance
20%
Granularity
10%
Summarization
10%
Metrics
10%
Large System
10%
Tasks
10%
Computer Science
Defect Prediction
100%
Prediction Performance
33%
Model
16%
Prediction Model
16%
Just-in-Time
16%
Prediction Technique
16%
Software Quality
16%
Communication
16%
Support Software
16%
Granularity
16%
Keyphrases
Intelligent Tools
11%
Firm Profits
11%
Splittable
11%