Scalable probabilistic latent semantic analysis

Number of patents in Portfolio can not be more than 2000

United States of America Patent

PATENT NO 7844449
SERIAL NO

11392763

Stats

ATTORNEY / AGENT: (SPONSORED)

Importance

Loading Importance Indicators... loading....

Abstract

See full text

A scalable two-pass scalable probabilistic latent semantic analysis (PLSA) methodology is disclosed that may perform more efficiently, and in some cases more accurately, than traditional PLSA, especially where large and/or sparse data sets are provided for analysis. The improved methodology can greatly reduce the storage and/or computational costs of training a PLSA model. In the first pass of the two-pass methodology, objects are clustered into groups, and PLSA is performed on the groups instead of the original individual objects. In the second pass, the conditional probability of a latent class, given an object, is obtained. This may be done by extending the training results of the first pass. During the second pass, the most likely latent classes for each object are identified.

Loading the Abstract Image... loading....

First Claim

See full text

Family

Loading Family data... loading....

Patent Owner(s)

Patent OwnerAddress
MICROSOFT TECHNOLOGY LICENSING LLCONE MICROSOFT WAY REDMOND WA 98052

International Classification(s)

  • [Classification Symbol]
  • [Patents Count]

Inventor(s)

Inventor Name Address # of filed Patents Total Citations
Chen, Zheng Beijing, CN 402 11152
Han, Jie Beijing, CN 47 508
Lin, Chenxi Beijing, CN 40 572
Wang, Jian Beijing, CN 1906 17240
Xue, Guirong Beijing, CN 5 94
Zeng, Hua-Jun Beijing, CN 69 3167
Zhang, Benyu Beijing, CN 103 3989

Cited Art Landscape

Load Citation

Patent Citation Ranking

Forward Cite Landscape

Load Citation