Content deleted Content added
m →top: Simplified hatnote syntax |
Citation bot (talk | contribs) Removed proxy/dead URL that duplicated identifier. | Use this bot. Report bugs. | Suggested by Corvus florensis | #UCB_webform 2523/3500 |
||
Line 71:
===Deep-Learning MF===
In recent years a number of neural and deep-learning techniques have been proposed, some of which generalize traditional Matrix factorization algorithms via a non-linear neural architecture.<ref>{{cite journal |last1=He |first1=Xiangnan |last2=Liao |first2=Lizi |last3=Zhang |first3=Hanwang |last4=Nie |first4=Liqiang |last5=Hu |first5=Xia |last6=Chua |first6=Tat-Seng |title=Neural Collaborative Filtering |journal=Proceedings of the 26th International Conference on World Wide Web |date=2017 |pages=173–182 |doi=10.1145/3038912.3052569 |url=https://dl.acm.org/citation.cfm?id=3052569 |accessdate=16 October 2019 |publisher=International World Wide Web Conferences Steering Committee|isbn=9781450349130 |arxiv=1708.05031 |s2cid=13907106 }}</ref>
While deep learning has been applied to many different scenarios: context-aware, sequence-aware, social tagging etc. its real effectiveness when used in a simple [[Collaborative filtering]] scenario has been put into question. Systematic analysis of publications applying deep learning or neural methods to the top-k recommendation problem, published in top conferences (SIGIR, KDD, WWW, RecSys, IJCAI), has shown that on average less than 40% of articles are reproducible, with as little as 14% in some conferences. Overall the studies identify 26 articles, only 12 of them could be reproduced and 11 of them could be outperformed by much older and simpler properly tuned baselines. The articles also highlights a number of potential problems in today's research scholarship and call for improved scientific practices in that area.<ref>{{cite journal |last1=Rendle |first1=Steffen |last2=Krichene |first2=Walid |last3=Zhang |first3=Li |last4=Anderson |first4=John |title=Neural Collaborative Filtering vs. Matrix Factorization Revisited |journal=Fourteenth ACM Conference on Recommender Systems |date=22 September 2020 |pages=240–248 |doi=10.1145/3383313.3412488|arxiv=2005.09683 |isbn=9781450375832 |doi-access=free }}</ref><ref>{{cite journal | last1=Dacrema |last2=Ferrari |title=A Troubling Analysis of Reproducibility and Progress in Recommender Systems Research. |journal=ACM Transactions on Information Systems |pages=39.2 |date=2021 |volume=39 |issue=2 |doi=10.1145/3434185
==See also==
|