2023
Conference article  Open Access

Commonsense injection in conversational systems: an adaptable framework for query expansion

Rocchietti G., Frieder O., Muntean C. I., Nardini F. M., Perego R.

Conversational systems  Query expansion  Common-sense knowledge  KBs  Information retrieval 

Recent advancements in conversational agents are leading a paradigm shift in how people search for their information needs, from text queries to entire spoken conversations. This paradigm shift poses a new challenge: a single question may lack the context driven by the entire conversation. We propose and evaluate a framework to deal with multi-turn conversations with the injection of commonsense knowledge. Specifically, we propose a novel approach for conversational search that uses pre-trained large language models and commonsense knowledge bases to enrich queries with relevant concepts. Our framework comprises a generator of candidate concepts related to the context of the conversation and a selector for deciding which candidate concept to add to the current utterance to improve retrieval effectiveness. We use the TREC CAsT datasets and ConceptNet to show that our framework improves retrieval performance by up to 82% in terms of Recall@200 and up to 154% in terms of NDCG@3 as compared to the performance achieved by the original utterances in the conversations.

Source: IEEE/WAT - 22nd International Conference on Web Intelligence and Intelligent Agent Technology, pp. 48–55, Venezia, Italy, 26-29/10/2023


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BibTeX entry
@inproceedings{oai:it.cnr:prodotti:489495,
	title = {Commonsense injection in conversational systems: an adaptable framework for query expansion},
	author = {Rocchietti G. and Frieder O. and Muntean C. I. and Nardini F. M. and Perego R.},
	doi = {10.1109/wi-iat59888.2023.00013},
	booktitle = {IEEE/WAT - 22nd International Conference on Web Intelligence and Intelligent Agent Technology, pp. 48–55, Venezia, Italy, 26-29/10/2023},
	year = {2023}
}