Ján Suchal - Rank all the things!
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Transcript of Ján Suchal - Rank all the things!
Rank all the things!@jsuchal@SynopsiTV
Blogs, newsletters
How do you learn things?
Courses, training
Conferences Work
Research papers?
WHY NOT?
WHY NOT?
“It’s not useful for the real-world.”
“I wouldn’t understand any of
that.”
About me
PhD dropout FIIT STU Bratislava
foaf.sk, otvorenezmluvy.sk, govdata.sk
sme.sk news recommender
developer @ SynopsiTV
My workflow
My workflow
MAGIC!M
AG
IC!
MA
GIC
!
Search vs. recommender engine
Search engine
input: queryoutput: list of results
Recommendation engine
input: movieoutput: list of similar movies
Academic Mode
Accurately interpreting clickthrough data as implicit feedback
Thorsten Joachims, Laura Granka, Bing Pan, Helene Hembrooke, and Geri Gay. Accurately interpreting clickthrough data as implicit feedback. In Proceedings of the 28th annual international ACM SIGIR conference on Research and development in Information retrieval, SIGIR ’05, pages 154–161, New York, NY, USA, 2005. ACM.
Significant on two-tailed tests at a 95% confidence level !!!
Accurately interpreting clickthrough data as implicit feedback
Thorsten Joachims, Laura Granka, Bing Pan, Helene Hembrooke, and Geri Gay. Accurately interpreting clickthrough data as implicit feedback. In Proceedings of the 28th annual international ACM SIGIR conference on Research and development in Information retrieval, SIGIR ’05, pages 154–161, New York, NY, USA, 2005. ACM.
Accurately interpreting clickthrough data as implicit feedback
Evaluation Metrics
● Mean Average Precision @ N○ probability of target result being in top N items
● Mean Reciprocal Rank○ 1 / rank of target result
● Normalized Discounted Cumulative Gain● Expected Reciprocal Rank
Optimizing search engines using clickthrough data
Thorsten Joachims. Optimizing search engines using clickthrough data. In Proceedings of the eighth ACM SIGKDD international conference on Knowledge discovery and data mining, KDD ’02, pages 133–142, New York, NY, USA, 2002. ACM.
Optimizing search engines using clickthrough data
Query chains: learning to rank from implicit feedback
Filip Radlinski and Thorsten Joachims. Query chains: learning to rank from implicit feedback. In KDD ’05: Proceeding of the eleventh ACM SIGKDD international conference on Knowledge discovery in data mining, pages 239–248, New York, NY, USA, 2005. ACM.
On Caption Bias in Interleaving Experiments
Katja Hofmann, Fritz Behr, and Filip Radlinski: On Caption Bias in Interleaving Experiments In Proceedings of the ACM Conference on Information and Knowledge Management (CIKM) 2012
On Caption Bias in Interleaving Experiments
Fighting Search Engine Amnesia: Reranking Repeated Results
Milad Shokouhi, Ryen W. White, Paul Bennett, and Filip Radlinski. Fighting search engine amnesia: reranking repeated results. In Proceedings of the 36th international ACM SIGIR conference on Research and development in information retrieval, SIGIR ’13, pages 273–282, New York, NY, USA, 2013. ACM.
In this paper, we observed that the same results are often shown to users multiple times during search sessions. We showed that there are a number of effects at play, which can be leveraged to improve information retrieval performance. In particular, previously skipped results are much less likely to be clicked, and previously clicked results may or may not be re-clicked depending on other factors of the session.
Challenges
Diversification
Group recommendations
Context-aware recommendations
Time of day
DeviceMood
Season
Location
Seriousrecommenders and search?Get in touch!
@synopsitv @jsuchal