A probabilistic optimization framework for the empty-answer problem
Davide Mottin,Alice Marascu,Senjuti Basu Roy,Gautam Das,Themis Palpanas,Yannis Velegrakis +5 more
- 01 Sep 2013
- Vol. 6, Iss: 14, pp 1762-1773
TL;DR: This work proposes a principled optimization-based interactive query relaxation framework for queries that return no answers, driven by a novel probabilistic framework based on optimizing a wide variety of application-dependent objective functions.
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Abstract: We propose a principled optimization-based interactive query relaxation framework for queries that return no answers. Given an initial query that returns an empty answer set, our framework dynamically computes and suggests alternative queries with less conditions than those the user has initially requested, in order to help the user arrive at a query with a non-empty answer, or at a query for which no matter how many additional conditions are ignored, the answer will still be empty. Our proposed approach for suggesting query relaxations is driven by a novel probabilistic framework based on optimizing a wide variety of application-dependent objective functions. We describe optimal and approximate solutions of different optimization problems using the framework. We analyze these solutions, experimentally verify their efficiency and effectiveness, and illustrate their advantage over the existing approaches.
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Citations
Exemplar queries: a new way of searching
Davide Mottin,Matteo Lissandrini,Yannis Velegrakis,Themis Palpanas +3 more
- 01 Dec 2016
TL;DR: This work introduces a novel query paradigm that considers a user query as an example of the data in which the user is interested and provides a formal specification of their semantics, which are fundamentally different from notions like queries by example, approximate queries and related queries.
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Relationship Queries on Extended Knowledge Graphs
Mohamed Yahya,Denilson Barbosa,Klaus Berberich,Qiuyue Wang,Gerhard Weikum +4 more
- 08 Feb 2016
TL;DR: The TriniT search engine for querying and ranking on extended knowledge graphs that combine relational facts with textual web contents is presented and a model for automatic query relaxation to compensate for mismatches between the data and a user's query is presented.
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Combining User and Database Perspective for Solving Keyword Queries over Relational Databases
TL;DR: The theory behind the approach, and its implementation into a system called QUEST (QUEry generator for STructured sources), which has been deeply tested to show the efficiency and effectiveness of the approach are presented.
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Graph Query Reformulation with Diversity
Davide Mottin,Francesco Bonchi,Francesco Gullo +2 more
- 10 Aug 2015
TL;DR: This work formalizes the problem of finding a set of reformulations of the input query by maximizing a linear combination of coverage and diversity among the specializations and proves that the problem is hard, but also that a simple greedy algorithm achieves a (1/2)-approximation guarantee.
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IQR: an interactive query relaxation system for the empty-answer problem
Davide Mottin,Alice Marascu,Senjuti Basu Roy,Gautam Das,Themis Palpanas,Yannis Velegrakis +5 more
- 18 Jun 2014
TL;DR: In IQR, a system that demonstrates optimization based interactive relaxations for queries that return an empty answer, IQR dynamically suggests one relaxation of the original query conditions at a time to the user, based on certain optimization objectives, until the user arrives at a non-empty answer.
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TL;DR: This work adapt and apply principles of probabilistic models from Information Retrieval for structured data to solve the problem of ranking answers to a database query when many tuples are returned.
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