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Frame forecasting in cine MRI using the PCA respiratory motion model: comparing recurrent neural networks trained online and transformers Sinc Kolmogorov-Arnold network and its application for solving PDEs with singularities P1-KAN: an effective Kolmogorov-Arnold network with application to hydraulic valley optimization Reconsidering the energy efficiency of spiking neural networks MemFlow: A Lightweight Forward Memorizing Framework for Quick Domain Adaptive Feature Mapping Adaptive Reorganization of Neural Pathways for Continual Learning with Spiking Neural Networks Attacking the Spike: On the Transferability and Security of Spiking Neural Networks to Adversarial Examples V3H: View Variation and View Heredity for Incomplete Multi-view Clustering Lossless fitness inheritance in genetic algorithms for decision trees On the Benefits of Inoculation, an Example in Train Scheduling Learning and discrimination through STDP in a top-down modulated associative memory Evolutionary Optimization in an Algorithmic Setting An associative memory for the on-line recognition and prediction of temporal sequences Searching for Globally Optimal Functional Forms for Inter-Atomic Potentials Using Parallel Tempering and Genetic Programming May We Have Your Attention: Analysis of a Selective Attention Task Cross-Entropic Learning of a Machine for the Decision in a Partially Observable Universe On the possible Computational Power of the Human Mind A Study on the Global Convergence Time Complexity of Estimation of Distribution Algorithms Instantaneously Trained Neural Networks "Going back to our roots": second generation biocomputing Evolving Stochastic Learning Algorithm Based on Tsallis Entropic Index On Self-Regulated Swarms, Societal Memory, Speed and Dynamics Dimensions of Neural-symbolic Integration - A Structured Survey The Hyper-Cortex of Human Collective-Intelligence Systems Separating a Real-Life Nonlinear Image Mixture The Combined Technique for Detection of Artifacts in Clinical Electroencephalograms of Sleeping Newborns A Neural-Network Technique to Learn Concepts from Electroencephalograms Self-Organization of the Neuron Collective of Optimal Complexity An Evolving Cascade Neural Network Technique for Cleaning Sleep Electroencephalograms A Neural Network Decision Tree for Learning Concepts from EEG Data Polynomial Neural Networks Learnt to Classify EEG Signals Diagnostic Rule Extraction Using Neural Networks Self-Organizing Multilayered Neural Networks of Optimal Complexity A Learning Algorithm for Evolving Cascade Neural Networks Learning Polynomial Networks for Classification of Clinical Electroencephalograms Fitness Uniform Deletion: A Simple Way to Preserve Diversity Property analysis of symmetric travelling salesman problem instances acquired through evolution The Self-Organization of Speech Sounds Decomposable Problems, Niching, and Scalability of Multiobjective Estimation of Distribution Algorithms Scalability of Genetic Programming and Probabilistic Incremental Program Evolution Multiobjective hBOA, Clustering, and Scalability Sub-structural Niching in Estimation of Distribution Algorithms Sub-Structural Niching in Non-Stationary Environments Oiling the Wheels of Change: The Role of Adaptive Automatic Problem Decomposition in Non--Stationary Environments Population Sizing for Genetic Programming Based Upon Decision Making Neural network ensembles: Evaluation of aggregation algorithms Map Segmentation by Colour Cube Genetic K-Mean Clustering Artificial Neoteny in Evolutionary Image Segmentation The Biological Concept of Neoteny in Evolutionary Colour Image Segmentation - Simple Experiments in Simple Non-Memetic Genetic Algorithms Swarms on Continuous Data Web Usage Mining Using Artificial Ant Colony Clustering and Genetic Programming Vector Symbolic Architectures answer Jackendoff's challenges for cognitive neuroscience Multidimensional data classification with artificial neural networks Applying Policy Iteration for Training Recurrent Neural Networks The Integration of Connectionism and First-Order Knowledge Representation and Reasoning as a Challenge for Artificial Intelligence Evolution of a Subsumption Architecture Neurocontroller Speculation on graph computation architectures and computing via synchronization When Do Differences Matter? 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Efficiently Training Time-to-First-Spike Spiking Neural Networks from Scratch
Kaiwei Che, Wei Fang, Zhengyu Ma, Yifan Huang, Peng Xue, Li Yuan · 2024-10-31 · via cs.NE updates on arXiv.org

Spiking Neural Networks (SNNs), with their event-driven and biologically inspired operation, are well-suited for energy-efficient neuromorphic hardware. Neural coding, critical to SNNs, determines how information is represented via spikes. Time-to-First-Spike (TTFS) coding, which uses a single spike per neuron, offers extreme sparsity and energy efficiency but suffers from unstable training and low accuracy due to its sparse firing. To address these challenges, we propose a training framework incorporating parameter initialization, training normalization, temporal output decoding, and pooling layer re-evaluation. The proposed parameter initialization and training normalization mitigate signal diminishing and gradient vanishing to stabilize training. The output decoding method aggregates temporal spikes to encourage earlier firing, thereby reducing the latency. The re-evaluation of the pooling layer indicates that average-pooling keeps the single-spike characteristic and that max-pooling should be avoided. Experiments show the framework stabilizes and accelerates training, reduces latency, and achieves state-of-the-art accuracy for TTFS SNNs on MNIST (99.48%), Fashion-MNIST (92.90%), CIFAR10 (90.56%), and DVS Gesture (95.83%).