Conversations with Search Engines: SERP-based Conversational Response Generation
Pengjie Ren, Zhumin Chen, Zhaochun Ren, Evangelos Kanoulas, Christof, Monz, and Maarten de Rijke

TL;DR
This paper introduces a new dataset and a state-of-the-art pipeline for conversational search, enabling search engines to provide more accurate, natural language responses to complex queries through multi-turn interactions.
Contribution
It creates the SaaC dataset and develops CaSE, a novel pipeline with supporting token identification and prior-aware generation for improved conversational search responses.
Findings
CaSE outperforms strong baseline models.
The SaaC dataset enables better training for conversational search.
Analysis reveals areas for further improvement.
Abstract
In this paper, we address the problem of answering complex information needs by conversing conversations with search engines, in the sense that users can express their queries in natural language, and directly receivethe information they need from a short system response in a conversational manner. Recently, there have been some attempts towards a similar goal, e.g., studies on Conversational Agents (CAs) and Conversational Search (CS). However, they either do not address complex information needs, or they are limited to the development of conceptual frameworks and/or laboratory-based user studies. We pursue two goals in this paper: (1) the creation of a suitable dataset, the Search as a Conversation (SaaC) dataset, for the development of pipelines for conversations with search engines, and (2) the development of astate-of-the-art pipeline for conversations with search engines, the…
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Taxonomy
TopicsTopic Modeling · Mobile Crowdsensing and Crowdsourcing · Multimodal Machine Learning Applications
