NELGMLDec 12, 2016

Neurogenesis Deep Learning

arXiv:1612.03770v2105 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of enabling deep networks to learn continuously from dynamic datasets, which is incremental as it builds on existing neurogenesis-inspired approaches.

The paper tackled the problem of continuous learning in deep neural networks by proposing a method inspired by adult neurogenesis to add new neurons, demonstrating its effectiveness on MNIST and NIST SD 19 datasets for addressing the stability-plasticity dilemma.

Neural machine learning methods, such as deep neural networks (DNN), have achieved remarkable success in a number of complex data processing tasks. These methods have arguably had their strongest impact on tasks such as image and audio processing - data processing domains in which humans have long held clear advantages over conventional algorithms. In contrast to biological neural systems, which are capable of learning continuously, deep artificial networks have a limited ability for incorporating new information in an already trained network. As a result, methods for continuous learning are potentially highly impactful in enabling the application of deep networks to dynamic data sets. Here, inspired by the process of adult neurogenesis in the hippocampus, we explore the potential for adding new neurons to deep layers of artificial neural networks in order to facilitate their acquisition of novel information while preserving previously trained data representations. Our results on the MNIST handwritten digit dataset and the NIST SD 19 dataset, which includes lower and upper case letters and digits, demonstrate that neurogenesis is well suited for addressing the stability-plasticity dilemma that has long challenged adaptive machine learning algorithms.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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