超维计算线性代码

IF 2.7 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Neural Computation Pub Date : 2024-03-10 DOI:10.1162/neco_a_01665
Netanel Raviv
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引用次数: 0

摘要

超维计算(HDC)是一种新兴的计算范式,用于将组合信息表示为高维向量,在机器学习和神经形态计算等应用领域具有广阔的发展前景。高维计算长期面临的挑战之一是将组成表示分解为其组成因子,这也被称为恢复问题。在这封信中,我们采用了一种新方法来解决恢复问题,并建议使用随机线性编码。这些代码是布尔域上的子空间,是信息论中一个研究得很透彻的课题,在数字通信中有各种应用。我们首先证明,使用随机线性编码的超维度编码保留了流行的(普通)随机编码的有利特性;因此,使用这两种方法的高清表示具有可比的信息存储能力。我们接着证明,随机线性编码提供了丰富的子编码结构,可用于形成键值存储,从而封装了最常用的 HDC 案例。最重要的是,我们表明,在我们开发的框架下,随机线性编码允许使用简单的恢复算法来因子(捆绑或绑定)组合表示。前者依赖于在布尔域上构建某些线性方程组,其求解方法极大地缩小了搜索空间,在许多情况下严格优于穷举搜索。后者利用这些代码的子空间结构来实现可证明正确的因式分解。这两种方法都比最先进的谐振网络快,通常快一个数量级。我们使用基准软件库在 Python 中实现了我们的技术,并展示了很有前景的实验结果。
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Linear Codes for Hyperdimensional Computing
Hyperdimensional computing (HDC) is an emerging computational paradigm for representing compositional information as high-dimensional vectors and has a promising potential in applications ranging from machine learning to neuromorphic computing. One of the long-standing challenges in HDC is factoring a compositional representation to its constituent factors, also known as the recovery problem. In this article, we take a novel approach to solve the recovery problem and propose the use of random linear codes. These codes are subspaces over the Boolean field and are a well-studied topic in information theory with various applications in digital communication. We begin by showing that hyperdimensional encoding using random linear codes retains favorable properties of the prevalent (ordinary) random codes; hence, HD representations using the two methods have comparable information storage capabilities. We proceed to show that random linear codes offer a rich subcode structure that can be used to form key-value stores, which encapsulate the most used cases of HDC. Most important, we show that under the framework we develop, random linear codes admit simple recovery algorithms to factor (either bundled or bound) compositional representations. The former relies on constructing certain linear equation systems over the Boolean field, the solution to which reduces the search space dramatically and strictly outperforms exhaustive search in many cases. The latter employs the subspace structure of these codes to achieve provably correct factorization. Both methods are strictly faster than the state-of-the-art resonator networks, often by an order of magnitude. We implemented our techniques in Python using a benchmark software library and demonstrated promising experimental results.
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来源期刊
Neural Computation
Neural Computation 工程技术-计算机:人工智能
CiteScore
6.30
自引率
3.40%
发文量
83
审稿时长
3.0 months
期刊介绍: Neural Computation is uniquely positioned at the crossroads between neuroscience and TMCS and welcomes the submission of original papers from all areas of TMCS, including: Advanced experimental design; Analysis of chemical sensor data; Connectomic reconstructions; Analysis of multielectrode and optical recordings; Genetic data for cell identity; Analysis of behavioral data; Multiscale models; Analysis of molecular mechanisms; Neuroinformatics; Analysis of brain imaging data; Neuromorphic engineering; Principles of neural coding, computation, circuit dynamics, and plasticity; Theories of brain function.
期刊最新文献
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