KDD 튜토리얼: 확장 가능한 혼합 멤버십 및 비모수 베이지안 모델 가이드
Source
Evernote/Inbox/KDD tutorial The Dataminer Guide to Scalable Mixed-Membership and Nonparametric Bayesian Models.md
Summary
Amr Ahmed와 Alexander J. Smola가 주讲的 KDD 튜토리얼로, 데이터 마이닝 관점에서 확장 가능한 혼합 멤버십(Mixed-Membership) 및 비모수 베이지안(Nonparametric Bayesian) 모델에 대한 가이드를 다룹니다.
Key Points
- 주제: 확장 가능한 혼합 멤버십 및 비모수 베이지안 모델
- 저자/강사: Amr Ahmed, Alexander J. Smola
- 출처: KDD 튜토리얼
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