Capturing Knowledge of Emerging Entities From Extended Search Snippets
Sunday C. Ngwobia, Saeedeh Shekarpour, Faisal Alshargi

TL;DR
This paper proposes unsupervised methods to extract and summarize knowledge about emerging entities from search snippets, addressing the gap left by traditional encyclopedic sources which focus on well-known entities.
Contribution
It introduces novel unsupervised techniques to capture and validate knowledge about emerging entities from search snippets, expanding beyond existing encyclopedic resources.
Findings
Achieved over 87% accuracy in entity recognition
Attained 75% accuracy in entity ranking
Recognized 87% of entailed types
Abstract
Google and other search engines feature the entity search by representing a knowledge card summarizing related facts about the user-supplied entity. However, the knowledge card is limited to certain entities that have a Wiki page or an entry in encyclopedias such as Freebase. The current encyclopedias are limited to highly popular entities, which are far fewer compared with the emerging entities. Despite the availability of knowledge about the emerging entities on the search results, yet there are no approaches to capture, abstract, summerize, fuse, and validate fragmented pieces of knowledge about them. Thus, in this paper, we develop approaches to capture two types of knowledge about the emerging entities from a corpus extended from top-n search snippets of a given emerging entity. The first kind of knowledge identifies the role(s) of the emerging entity as, e.g., who is s/he? The…
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Taxonomy
TopicsTopic Modeling · Web Data Mining and Analysis · Advanced Text Analysis Techniques
