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SotA/Knowledge Base/Recommendation Systems

Recommendation Systems

342 benchmarks6047 papers

Recommendation System in AI Research

A Recommendation System is a specialized AI-driven model that analyzes user preferences and behaviors to suggest relevant content, products, or services. It is widely used in domains like e-commerce, streaming platforms, social media, and personalized learning.

AI research in recommendation systems focuses on:

  • Collaborative Filtering: Predicting user preferences based on similar users' choices.
  • Content-Based Filtering: Recommending items based on user history and item characteristics.
  • Hybrid Models: Combining multiple techniques for better accuracy.
  • Deep Learning & Transformers: Using neural networks and self-attention mechanisms for personalized recommendations.
  • Graph-Based Approaches: Leveraging knowledge graphs for relationship-aware recommendations.

Key challenges include data sparsity, scalability, and bias mitigation. Cutting-edge research explores reinforcement learning, explainability, and privacy-preserving methods to enhance recommendation systems.

Benchmarks

Recommendation Systems on Amazon Baby

RecallnDCGHit RatioNDCG@20

Recommendation Systems on Amazon Beauty

RecallnDCGHit RatioHit@10nDCG@10NDCGHR@10NDCG@10

Recommendation Systems on Amazon Digital Music

RecallnDCGHit Ratio

Recommendation Systems on Amazon Office Products

RecallnDCGHit Ratio

Recommendation Systems on Amazon Toys & Games

RecallHit RationDCG

Recommendation Systems on MovieLens 100K

RMSE (u1 Splits)RMSE (Random 90/10 Splits)RMSE

Recommendation Systems on MovieLens 1M

RMSEHR@10nDCG@10HR@10 (full corpus)NDCG@10 (full corpus)NDCG@10nDCG@100HR@5HR@20NDCG@5NDCG@20PrecisionHR@100PSP@10HR@5 (99 Neg. Samples)HR@10 (99 Neg. Samples)NDCG@5 (99 Neg. Samples)NDCG@10 (99 Neg. Samples)MRR (99 Neg. Samples)MRR@10NDCGHR@50MRR@20MRR@50NDCG@50

Recommendation Systems on MovieLens 10M

RMSEMAP@15MAP@30MAP@5NDCG@15NDCG@30NDCG@5HR@10HR@100PSP@10nDCG@10nDCG@100NDCGPrecisionRecall

Recommendation Systems on Amazon-Book

nDCG@20Recall@20HR@10NDCG@10HR@50NDCG@50

Recommendation Systems on Diginetica

MRR@20Hit@20

Recommendation Systems on Gowalla

nDCG@20Recall@20HR@10HR@100PSP@10nDCG@10nDCG@100COV@1COV@10COV@5HR@5NDCG@1NDCG@10NDCG@5MRR@20HR@20

Recommendation Systems on yoochoose1/64

MRR@20HR@20Hit@20

Recommendation Systems on Amazon Clothing

NDCG@20

Recommendation Systems on Amazon Sports

NGCG@20

Recommendation Systems on MovieLens 20M

Recall@50Recall@20nDCG@100nDCG@10HR@10 (full corpus)nDCG@10 (full corpus)HR@10Recall@10Recall@100Recall@2

Recommendation Systems on Yelp2018

NDCG@20Recall@20HR@10HR@100PSP@10nDCG@10nDCG@100

Recommendation Systems on Douban Monti

RMSE

Recommendation Systems on ReDial

Recall@10Recall@50Recall@1

Recommendation Systems on Flixster Monti

RMSE

Recommendation Systems on Million Song Dataset

Recall@50nDCG@100Recall@20Recall@100

Recommendation Systems on Netflix

nDCG@100Recall@20Recall@50Recall@10nDCG@10AUCPSP@10mAP@10Recall@100

Recommendation Systems on YahooMusic Monti

RMSE

Recommendation Systems on Amazon Games

Hit@10nDCG@10AUCNDCG

Recommendation Systems on Douban

RMSENDCGRecall@20AUCHR@10HR@100PSP@10nDCG@10nDCG@100

Recommendation Systems on Yelp

HR@10NDCG@20NDCGRecall@20HR@5HR@20NDCG@5NDCG@10HR@5 (99 Neg. Samples)HR@10 (99 Neg. Samples)NDCG@5 (99 Neg. Samples)NDCG@10 (99 Neg. Samples)MRR (99 Neg. Samples)

Recommendation Systems on Amazon Men

Hit@10NDCGnDCG@10

Recommendation Systems on MovieLens

HR@10Recall@10nDCG@10

Recommendation Systems on Multi-behavior Taobao

HR@10

Recommendation Systems on yoochoose1

Precision@20MRR@20

Recommendation Systems on yoochoose1/4

MRR@20HR@20Hit@20

Recommendation Systems on Amazon-Beauty

NDCG@20HR@10nDCG@10MRR@20HR@20HR@5NDCG@5MAP@20HR@50MRR@10MRR@50NDCG@50

Recommendation Systems on Amazon-Sports

HR@10HR@5NDCG@10HR@20NDCG@5MRR@10

Recommendation Systems on Epinions

MAERMSEMAP@20MRR@20NDCG@20

Recommendation Systems on Flixster

RMSEHits@10Hits@20nDCG@10nDCG@20

Recommendation Systems on Last.FM

MRR@20HR@20HR@10NDCG@20Recall@10Recall@100Recall@2Recall@20Recall@50nDCG@10

Recommendation Systems on YahooMusic

RMSE

Recommendation Systems on Amazon Fashion

HitRatio@ 10 (100 Neg. Samples)nDCG@10 (100 Neg. Samples)AUCnDCG@10 (500 Neg. Samples)Hit@10NDCG

Recommendation Systems on Amazon Product Data

AUCF1

Recommendation Systems on DBbook2014

HR@10NDCGnDCG@10

Recommendation Systems on Polyvore

AUCAccuracy

Recommendation Systems on Retailrocket

MRR@20Hit@20

Recommendation Systems on WeChat

AUCP@10

Recommendation Systems on ..

0S

Recommendation Systems on Alibaba-iFashion

NDCG@20Recall@20

Recommendation Systems on Amazon Books

Recall@20

Recommendation Systems on Amazon C&A

Hits@10Hits@20nDCG@10nDCG@20

Recommendation Systems on Amazon Cell Phones

Hit@5

Recommendation Systems on Amazon-CDs

MAP@20MRR@20NDCG@20Recall@10nDCG@10

Recommendation Systems on Amazon-Electronics

MAP@20MRR@20NDCG@20

Recommendation Systems on Amazon-Health

MAP@20MRR@20NDCG@20

Recommendation Systems on Amazon-Movies

MAP@20MRR@20NDCG@20

Recommendation Systems on Amazon-Toys

HR@5

Recommendation Systems on Amazon-Video-Games

HR@10NDCG@10MRR@10

Recommendation Systems on Amazon-book

Recall@20

Recommendation Systems on BeerAdvocate

MAERMSE

Recommendation Systems on Behance

COV@1COV@10COV@5HR@10HR@5NDCG@1NDCG@10NDCG@5

Recommendation Systems on Book-Crossing

Hits@10Hits@20Recall@10Recall@100Recall@2Recall@50nDCG@10nDCG@20

Recommendation Systems on Ciao

Hits@10Hits@20nDCG@10nDCG@20

Recommendation Systems on CiteULike

Recall@10mAP@10

Recommendation Systems on Declicious

Hits@10Hits@20nDCG@10nDCG@20

Recommendation Systems on Delicious

NDCGRecall@20

Recommendation Systems on Dianping-Food

Recall@10Recall@100Recall@2Recall@50

Recommendation Systems on Echonest

Recall@10mAP@10

Recommendation Systems on Epinions-Extend

Recall@10mAP@10

Recommendation Systems on Fashion-Similar

MRR@20

Recommendation Systems on Frappe

RMSERecall@10mAP@10

Recommendation Systems on GoodReads-Children

Recall@10nDCG@10

Recommendation Systems on GoodReads-Comics

Recall@10nDCG@10

Recommendation Systems on KuaiRand

HR@10HR@20HR@50MRR@10MRR@20MRR@50NDCG@10NDCG@20NDCG@50

Recommendation Systems on Kwai

NDCGPrecisionRecallRecall@10nDCG@10

Recommendation Systems on Last.FM-360k

Recall@10mAP@10

Recommendation Systems on LastFM

HR@5HR@10HR@20NDCG@5NDCG@10NDCG@20HR@5 (99 Neg. Samples)HR@10 (99 Neg. Samples)NDCG@5 (99 Neg. Samples)NDCG@10 (99 Neg. Samples)MRR (99 Neg. Samples)

Recommendation Systems on MovieLens-Latest

Recall@10mAP@10

Recommendation Systems on Pinterest

nDCG@10Hits@10Hits@20nDCG@20

Recommendation Systems on PixelRec

Hit@10

Recommendation Systems on Steam

Hit@10nDCG@10

Recommendation Systems on Tiktok

NDCGPrecisionRecallRecall@10nDCG@10

Recommendation Systems on Tradesy

Hits@10Hits@20nDCG@10nDCG@20