Here, in this Research survey paper, we will learn RS techniques and draw commonalities between IR and RS, and try to adapt and leverage different IR models to RS
IR deals with the study of information retrieval techniques based on the inputs given by the user. There is another field called IF, which also revolves around information processing and presents with information to the user which may be of interest to them. One of the widely used IF techniques is the Recommender Systems which provides personalized suggestions to users based on their interests. If we broadly look at IR and IF (RS), both are quite similar in processing the vast available information and share the most relevant ones based on various retrieval techniques.
- Model approaches
- Content-based Filtering Recommender
- Collaborative Filtering Recommender
- Model-based Recommender
- Neighborhood-based Recommender
- Hybrid Filtering Recommender
- Collaborative Filtering Recommender
- Matrix Factorization to build recommendation algorithm
- Content-based Filtering Recommender
- Robustness to incompleteness:
- Sparcity bias
- Popularity bias
- Discriminative power
- Clustering algorithms
- Hard-Clustering
- Soft-Clustering
- Linear Models
- DLime: learns inter-document similarities
- TLime: learns inter-term similarities
Department of Textile & Fibre Engineering
Indian Institute of Technology Delhi
Hauz Khas, New Delhi, India
tt1180924@iitd.ac.in
Department of Chemical Engineering
Indian Institute of Technology Delhi
Hauz Khas, New Delhi, India
ch1180243@iitd.ac.in