Publication | Open Access
A Flexible Selection Scheme for Minimum-Effort Transfer Learning
15
Citations
30
References
2020
Year
Unknown Venue
Mathematical ProgrammingArtificial IntelligenceFew-shot LearningConvolutional Neural NetworkEngineeringMachine LearningFine-tuning Individual UnitsPre-trainingImage AnalysisData SciencePattern RecognitionDomain ShiftsVideo TransformerMachine VisionComputational Learning TheoryFeature LearningVision Language ModelTraining SourceComputer ScienceStatistical Learning TheoryDeep LearningComputer VisionFlexible Selection SchemeTransfer Learning
Fine-tuning is a popular way of exploiting knowledge contained in a pre-trained convolutional network for a new visual recognition task. However, the orthogonal setting of transferring knowledge from a pretrained network to a visually different yet semantically close source is rarely considered: This commonly happens with real-life data, which is not necessarily as clean as the training source (noise, geometric transformations, different modalities, etc.).To tackle such scenarios, we introduce a new, generalized form of fine-tuning, called flex-tuning, in which any individual unit (e.g. layer) of a network can be tuned, and the most promising one is chosen automatically. In order to make the method appealing for practical use, we propose two lightweight and faster selection procedures that prove to be good approximations in practice. We study these selection criteria empirically across a variety of domain shifts and data scarcity scenarios, and show that fine-tuning individual units, despite its simplicity, yields very good results as an adaptation technique. As it turns out, in contrast to common practice, rather than the last fully-connected unit it is best to tune an intermediate or early one in many domain- shift scenarios, which is accurately detected by flex-tuning.
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