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Mechanism for feature learning in neural networks and backpropagation-free machine learning models

Adityanarayanan Radhakrishnan, Daniel Beaglehole, Parthe Pandit, Mikhail Belkin

2024Science65 citationsDOI

Abstract

Understanding how neural networks learn features, or relevant patterns in data, for prediction is necessary for their reliable use in technological and scientific applications. In this work, we presented a unifying mathematical mechanism, known as average gradient outer product (AGOP), that characterized feature learning in neural networks. We provided empirical evidence that AGOP captured features learned by various neural network architectures, including transformer-based language models, convolutional networks, multilayer perceptrons, and recurrent neural networks. Moreover, we demonstrated that AGOP, which is backpropagation-free, enabled feature learning in machine learning models, such as kernel machines, that a priori could not identify task-specific features. Overall, we established a fundamental mechanism that captured feature learning in neural networks and enabled feature learning in general machine learning models.

Topics & Concepts

Artificial intelligenceComputer scienceMachine learningArtificial neural networkFeature (linguistics)BackpropagationTypes of artificial neural networksRecurrent neural networkDeep learningConvolutional neural networkMechanism (biology)Multilayer perceptronMulti-task learningTask (project management)EngineeringSystems engineeringLinguisticsPhilosophyEpistemologyMachine Learning in Materials ScienceNeural Networks and ApplicationsMachine Learning and Data Classification
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