Developing a Meta-suggestion Engine for Search Queries
Seungmin Kim, EunChan Na, Seong Baeg Kim

TL;DR
This paper introduces a meta-suggestion engine that retrieves and reranks query suggestions from multiple search engines, improving suggestion quality without relying on search logs, thus enhancing user search experience.
Contribution
The study develops a novel meta-suggestion engine that aggregates and reranks suggestions from various search engines, outperforming major engines in suggestion relevance without needing search logs.
Findings
17% improvement in NDCG over major search engines
31% improvement in suggestion precision
Effective for any webpage without search log dependency
Abstract
Typically, search engines provide query suggestions to assist users in the search process. Query suggestions are very important for improving users search experience. However, most query suggestions are based on the user's search logs, and they can be influenced by infrequently searched queries. Depending on the user's query, query suggestions can be ineffective in global search engines but effective in a domestic search engine. Conversely, it can be effective in global engines and weak in domestic engines. In addition, log-based query suggestions require many search logs, which makes them difficult to construct outside of a large search engine. Some search engines do not provide query suggestions, making searches difficult for users. These query suggestion vulnerabilities degrade the user's search experience. In this study, we develop a meta-suggestion, a new query suggestion scheme.…
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