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Talks and Poster Presentations (with Proceedings-Entry):

S. Hofstätter, M. Zlabinger, M. Sertkan, M. Schröder, A. Hanbury:
"Fine-Grained Relevance Annotations for Multi-Task Document Ranking and Question Answering";
Talk: CIKM 2020: International Conference on Information & Knowledge Management 2020, Virtual Event, Ireland; 2020-12-03 - 2020-12-05; in: "Proceedings of the 29th ACM International Conference on Information & Knowledge Management", Association for Computing Machinery, (2020), ISBN: 9781450368599; 3031 - 3038.



English abstract:
There are many existing retrieval and question answering datasets. However, most of them either focus on ranked list evaluation or single-candidate question answering. This divide makes it challenging to properly evaluate approaches concerned with ranking documents and providing snippets or answers for a given query. In this work, we present FiRA: a novel dataset of Fine-Grained Relevance Annotations. We extend the ranked retrieval annotations of the Deep Learning track of TREC 2019 with passage and word level graded relevance annotations for all relevant documents. We use our newly created data to study the distribution of relevance in long documents, as well as the attention of annotators to specific positions of the text. As an example, we evaluate the recently introduced TKL document ranking model. We find that although TKL exhibits state-of-the-art retrieval results for long documents, it misses many relevant passages.

Keywords:
fine-grained annotations, position bias, relevance distribution, word-level relevance


"Official" electronic version of the publication (accessed through its Digital Object Identifier - DOI)
http://dx.doi.org/10.1145/3340531.3412878

Electronic version of the publication:
https://publik.tuwien.ac.at/files/publik_291499.pdf


Created from the Publication Database of the Vienna University of Technology.