Select, Link and Rank: Diversified Query Expansion and Entity Ranking Using Wikipedia
نویسندگان
چکیده
A search query, being a very concise grounding of user intent, could potentially have many possible interpretations. Search engines hedge their bets by diversifying top results to cover multiple such possibilities so that the user is likely to be satisfied, whatever be her intended interpretation. Diversified Query Expansion is the problem of diversifying query expansion suggestions, so that the user can specialize the query to better suit her intent, even before perusing search results. We propose a method, Select-Link-Rank, that exploits semantic information from Wikipedia to generate diversified query expansions. SLR does collective processing of terms and Wikipedia entities in an integrated framework, simultaneously diversifying query expansions and entity recommendations. SLR starts with selecting informative terms from search results of the initial query, links them to Wikipedia entities, performs a diversity-conscious entity scoring and transfers such scoring to the term space to arrive at query expansion suggestions. Through an extensive empirical analysis and user study, we show that our method outperforms the state-of-the-art diversified query expansion and diversified entity recommendation techniques.
منابع مشابه
Towards Supporting Exploratory Search over the Arabic Web Content: The Case of ArabXplore
Due to the huge amount of data published on the Web, the Web search process has become more difficult, and it is sometimes hard to get the expected results, especially when the users are less certain about their information needs. Several efforts have been proposed to support exploratory search on the web by using query expansion, faceted search, or supplementary information extracted from exte...
متن کاملLearning to expand queries using entities
A substantial fraction of web search queries contain references to entities, such as persons, organizations, and locations. Recently, methods that exploit named entities have been shown to be more effective for query expansion than traditional pseudo-relevance feedback methods. In this paper, we introduce a supervised learning approach that exploits named entities for query expansion, using Wik...
متن کاملBIT and MSRA at TREC KBA CCR Track 2013
Our strategy for TREC KBA CCR track is to first retrieve as many vital or documents as possible and then apply more sophisticated classification and ranking methods to differentiate vital from useful documents. We submitted 10 runs generated by 3 approaches: question expansion, classification and learning to rank. Query expansion is an unsupervised baseline, in which we combine entities’ names ...
متن کاملExploiting Locality of Wikipedia Links in Entity Ranking
Information retrieval from web and XML document collections is ever more focused on returning entities instead of web pages or XML elements. There are many research fields involving named entities; one such field is known as entity ranking, where one goal is to rank entities in response to a query supported with a short list of entity examples. In this paper, we describe our approach to ranking...
متن کاملThe CASIA Entity linking System at TAC 2013
In this paper, we describe our entity linking system at TAC-KBP 2013. Our system consists of four modules. 1) Query expansion module. 2) Candidate generation module. 3) Candidate Entity disambiguation module. 4) NIL clustering module. First, we expand the queries with the information of the query documents. Then we find the candidates of queries from the Knowledge Base using the WikiPedia knowl...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2016