O'BTW: an opportunistic, similarity-based mobile recommendation system
Abstract
Reference
Index Terms
- O'BTW: an opportunistic, similarity-based mobile recommendation system
Recommendations
Analyzing weighting schemes in collaborative filtering: cold start, post cold start and power users
SAC '12: Proceedings of the 27th Annual ACM Symposium on Applied ComputingCollaborative filtering recommender systems provide their users with relevant items based on information from other similar users. Popular collaborative filtering approaches such as Pearson correlation coefficient and cosine similarity, compute the ...
Learning similarity measures from data
AbstractDefining similarity measures is a requirement for some machine learning methods. One such method is case-based reasoning (CBR) where the similarity measure is used to retrieve the stored case or a set of cases most similar to the query case. ...
Judging similarity: a user-centric study of related item recommendations
RecSys '18: Proceedings of the 12th ACM Conference on Recommender SystemsRelated item recommenders operate in the context of a particular item. For instance, a music system's page about the artist Radio-head might recommend other similar artists such as The Flaming Lips. Often central to these recommendations is the ...
Comments
Information & Contributors
Information
Published In

- General Chairs:
- Hao-Hua Chu,
- Polly Huang,
- Program Chairs:
- Romit Roy Choudhury,
- Feng Zhao
Sponsors
In-Cooperation
Publisher
Association for Computing Machinery
New York, NY, United States
Publication History
Check for updates
Author Tags
Qualifiers
- Demonstration
Conference
Acceptance Rates
Contributors
Other Metrics
Bibliometrics & Citations
Bibliometrics
Article Metrics
- 0Total Citations
- 190Total Downloads
- Downloads (Last 12 months)2
- Downloads (Last 6 weeks)0
Other Metrics
Citations
View Options
Login options
Check if you have access through your login credentials or your institution to get full access on this article.
Sign in