The Nested Chinese Restaurant Franchise Process: User Tracking and Document Modeling
Source
Evernote/Inbox/The Nested Chinese Restaurant Franchise Process User Tracking and Document Modeling.md
Summary
Amr Ahmed, Liangjie Hong, Alexander J Smola 가 저술한 논문 ‘The Nested Chinese Restaurant Franchise Process: User Tracking and Document Modeling’ 에 대한 참고 링크입니다. Google Publications 피드를 통해 수집된 항목이며, 구체적인 논문 내용이나 요약은 포함되어 있지 않습니다.
Key Points
- 논문 제목: The Nested Chinese Restaurant Franchise Process: User Tracking and Document Modeling
- 저자: Amr Ahmed, Liangjie Hong, Alexander J Smola
- 출처: Google Publications (Atom Feed)
- 문서 성격: 외부 링크 및 메타데이터만 존재하는 참고용 항목
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