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Wish I could be in Lucca in person, but am thankful to the organizers for the possibility to give a remote keynote at IR4Good at #ECIR25 on Bias and Transparency in Recommender Systems: under the Lens of DSA/AIA (and friends).

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The Workshop on Open Web Search at #ECIR2025 just starts with a keynote by @claclarke.bsky.social on Annotative Indexing. #WOWS25 #WOWS2025 #ECIR25

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Efficient Session Retrieval Using Topical Index Shards <p>by Gijs Hendriksen, Djoerd Hiemstra, and Arjen de Vries. </p> <p>Retrieval is often considered one query at a time. However, in practice, queries regularly come in the context of sessions with coherent topics. By dividing a collection into topical index shards and matching the topical context of a session with the right shards, we may reduce the amount of resources required for answering each query. We consider two alternatives: (1) starting with exhaustive search and pruning unnecessary shards after each session turn, and (2) applying a resource selection algorithm to pre-select shards at the start of the session. We empirically evaluate our approaches on a conversational search dataset (CAsT), and compare effectiveness and resource usage against exhaustive retrieval. Our experiments show that both approaches reduce the number of postings necessary to fulfill a search request (by 50-80%), and in terms of effectiveness our systems are statistically indistinguishable from a system performing exhaustive retrieval.</p> <p><em>To be presented at the European Conference on Information Retrieval (<a href="https://ecir2025.eu/">ECIR 2025</a>) in Lucca, Italy on 6-10 April 2025.</em></p> <p> [<a href="https://djoerdhiemstra.com/wp-content/uploads/ecir2025shards.pdf">download pdf</a>]</p>

To be presented at #ECIR2025 in Lucca Italy: Efficient Session Retrieval Using Topical Index Shards; with @gijs and @arjen. #ECIR25

djoerdhiemstra.com/2025/efficient-session-r...

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