Shohei Hido, Shoko Suzuki, et al.
Journal of Information Processing
We propose an efficient algorithm for principal component analysis (PCA) that is applicable when only the inner product with a given vector is needed. We show that Krylov subspace learning works well both in matrix compression and implicit calculation of the inner product by taking full advantage of the arbitrariness of the seed vector. We apply our algorithm to a PCA-based change-point detection algorithm, and show that it results in about 50 times improvement in computational time.
Shohei Hido, Shoko Suzuki, et al.
Journal of Information Processing
Vagelis Hristidis, Oscar Valdivia, et al.
SDM 2007
Tsuyoshi Idé, Hisashi Kashima
KDD 2004
Tsuyoshi Idé
ICDM 2005