Disturbed-entropy: A simple data quality assessment approach
Yang Li, Xuewei Chao, Sezai Erċışlı
Abstract
From the perspective of information value, we proposed a simple and effective approach to assess data quality, called disturbed-entropy. In specific, considering image classification task, the existing samples per category are statistically represented as a pixel prototype, which is used to disturb the unseen samples. Then, the entropy of disturbed image is calculated based on predicted probability. Both the numerical and visual experiments are conducted to show the effect. In case of same data budget, the performance comparison based on selected good and bad data is significant and consistent. This work attempts to gain insight into data quality and redundancy.
Topics & Concepts
Entropy (arrow of time)Computer sciencePixelRedundancy (engineering)Data miningImage qualityPrinciple of maximum entropyArtificial intelligenceMachine learningStatisticsPattern recognition (psychology)MathematicsImage (mathematics)PhysicsOperating systemQuantum mechanicsImage and Video Quality AssessmentData Stream Mining TechniquesNeural Networks and Applications