This paper discusses a few algorithms for updating the approximate Singular Value Decomposition (SVD) in the context of information retrieval by Latent Semantic Indexing (LSI) methods. A unifying framework is considered which is based on Rayleigh-Ritz projection methods. First, a Rayleigh-Ritz approach for the SVD is discussed and it is then used to interpret the Zha--Simon algorithms [SIAM J. Scient. Comput. vol. 21 (1999), pp. 782-791]. This viewpoint leads to a few alternatives whose goal is to reduce computational cost and storage requirement by projection techniques that utilize subspaces of much smaller dimension. Numerical experiments show that the proposed algorithms yield accuracies comparable to those obtained from standard ones at a much lower computational cost.
翻译:本文讨论了在通过远程语义索引(LSI)方法检索信息的情况下更新大致的单值分解(SVD)的一些算法,认为一个统一框架是以Rayleigh-Ritz预测方法为基础,首先讨论了SVD的Rayleigh-Ritz方法,然后用来解释Zha-Simon算法[SIAM J.Scient.Comput. vol. 21(1999),pp. 782-791],这一观点引出了几种备选方法,其目的在于通过利用小得多的子空间的投射技术减少计算成本和储存要求。