Invention Grant
- Patent Title: Knowledge discovery from citation networks
-
Application No.: US15049975Application Date: 2016-02-22
-
Publication No.: US09892367B2Publication Date: 2018-02-13
- Inventor: Zhen Guo , Mark Zhang
- Applicant: The Research Foundation for the State University of New York
- Applicant Address: US NY Binghamton
- Assignee: The Research Foundation for the State University of New York
- Current Assignee: The Research Foundation for the State University of New York
- Current Assignee Address: US NY Binghamton
- Agency: Tully Rinckey PLLC
- Agent Steven M. Hoffberg
- Main IPC: G06F7/00
- IPC: G06F7/00 ; G06F17/00 ; G06N99/00 ; G06Q10/10 ; G06N7/00 ; G06F17/30

Abstract:
In a corpus of scientific articles such as a digital library, documents are connected by citations and one document plays two different roles in the corpus: document itself and a citation of other documents. A Bernoulli Process Topic (BPT) model is provided which models the corpus at two levels: document level and citation level. In the BPT model, each document has two different representations in the latent topic space associated with its roles. Moreover, the multi-level hierarchical structure of the citation network is captured by a generative process involving a Bernoulli process. The distribution parameters of the BPT model are estimated by a variational approximation approach.
Public/Granted literature
- US20160171391A1 KNOWLEDGE DISCOVERY FROM CITATION NETWORKS Public/Granted day:2016-06-16
Information query