论文标题

协同学习:基于神经网络的特征提取,用于高度精确的高维学习

SynergicLearning: Neural Network-Based Feature Extraction for Highly-Accurate Hyperdimensional Learning

论文作者

Nazemi, Mahdi, Esmaili, Amirhossein, Fayyazi, Arash, Pedram, Massoud

论文摘要

机器学习模型在准确性,计算/记忆复杂性,训练时间和适应性方面有所不同。例如,由于其自​​动特征提取的质量,神经网络(NNS)以其高精度而闻名,而大脑启发的超差(HD)学习模型以其快速培训,计算效率和适应性而闻名。这项工作提出了一种混合,协同的机器学习模型,该模型在所有上述特征上都擅长,并且适合在芯片上进行递增的在线学习。提出的模型包括一个NN和分类器。 NN充当功能提取器,经过专门培训,可以与采用高清计算框架的分类器合作。这项工作还提出了上述特征提取和分类组件的参数化硬件实现,同时引入了将任何任意NN和/或分类器映射到上述硬件的编译器。提出的混合机器学习模型具有与NNS相同的准确性(即$ \ pm $ 1%),同时与HD学习模型相比,准确性至少提高了10%。此外,与最先进的高性能HD学习实现相比,混合模型的端到端硬件实现将功率效率提高了1.60倍,同时将延迟提高了2.13倍。这些结果对这种协同模型在挑战认知任务中的应用具有深远的影响。

Machine learning models differ in terms of accuracy, computational/memory complexity, training time, and adaptability among other characteristics. For example, neural networks (NNs) are well-known for their high accuracy due to the quality of their automatic feature extraction while brain-inspired hyperdimensional (HD) learning models are famous for their quick training, computational efficiency, and adaptability. This work presents a hybrid, synergic machine learning model that excels at all the said characteristics and is suitable for incremental, on-line learning on a chip. The proposed model comprises an NN and a classifier. The NN acts as a feature extractor and is specifically trained to work well with the classifier that employs the HD computing framework. This work also presents a parameterized hardware implementation of the said feature extraction and classification components while introducing a compiler that maps any arbitrary NN and/or classifier to the aforementioned hardware. The proposed hybrid machine learning model has the same level of accuracy (i.e. $\pm$1%) as NNs while achieving at least 10% improvement in accuracy compared to HD learning models. Additionally, the end-to-end hardware realization of the hybrid model improves power efficiency by 1.60x compared to state-of-the-art, high-performance HD learning implementations while improving latency by 2.13x. These results have profound implications for the application of such synergic models in challenging cognitive tasks.

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