论文标题
流媒体编码可扩展高维计算的算法
Streaming Encoding Algorithms for Scalable Hyperdimensional Computing
论文作者
论文摘要
高维计算(HDC)是源自计算神经科学的数据表示和学习的范式。 HDC将数据表示为高维,低精度向量,可用于学习或召回等各种信息处理任务。高维空间的映射是HDC中的一个基本问题,现有方法在输入数据本身是高维时会遇到可伸缩性问题。在这项工作中,我们探索了一个基于哈希的流媒体编码技术。我们正式表明,这些方法在学习应用程序的性能方面具有可比的保证,同时比现有替代方案更有效。我们在一个流行的高维分类问题上对这些结果进行了实验验证,并表明我们的方法很容易扩展到非常大的数据集。
Hyperdimensional computing (HDC) is a paradigm for data representation and learning originating in computational neuroscience. HDC represents data as high-dimensional, low-precision vectors which can be used for a variety of information processing tasks like learning or recall. The mapping to high-dimensional space is a fundamental problem in HDC, and existing methods encounter scalability issues when the input data itself is high-dimensional. In this work, we explore a family of streaming encoding techniques based on hashing. We show formally that these methods enjoy comparable guarantees on performance for learning applications while being substantially more efficient than existing alternatives. We validate these results experimentally on a popular high-dimensional classification problem and show that our approach easily scales to very large data sets.