Publication | Open Access
Your Classifier is Secretly an Energy Based Model and You Should Treat it Like One
86
Citations
42
References
2019
Year
EngineeringMachine LearningGenerative SystemClassification MethodImage AnalysisData ScienceData MiningPattern RecognitionGenerative ModelJoint Distribution PSemi-supervised LearningMachine VisionStandard Discriminative ClassifierIntelligent ClassificationComputer ScienceDeep LearningComputer VisionData ClassificationGenerative Adversarial NetworkStandard Class ProbabilitiesClassifier SystemGenerative AiLearning Classifier System
We propose to reinterpret a standard discriminative classifier of p(y|x) as an energy based model for the joint distribution p(x,y). In this setting, the standard class probabilities can be easily computed as well as unnormalized values of p(x) and p(x|y). Within this framework, standard discriminative architectures may beused and the model can also be trained on unlabeled data. We demonstrate that energy based training of the joint distribution improves calibration, robustness, andout-of-distribution detection while also enabling our models to generate samplesrivaling the quality of recent GAN approaches. We improve upon recently proposed techniques for scaling up the training of energy based models and presentan approach which adds little overhead compared to standard classification training. Our approach is the first to achieve performance rivaling the state-of-the-artin both generative and discriminative learning within one hybrid model.
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