Darío Garigliotti
University of Stavanger
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Publication
Featured researches published by Darío Garigliotti.
international acm sigir conference on research and development in information retrieval | 2017
Darío Garigliotti; Faegheh Hasibi; Krisztian Balog
Identifying the target types of entity-bearing queries can help improve retrieval performance as well as the overall search experience. In this work, we address the problem of automatically detecting the target types of a query with respect to a type taxonomy. We propose a supervised learning approach with a rich variety of features. Using a purpose-built test collection, we show that our approach outperforms existing methods by a remarkable margin.
international acm sigir conference on research and development in information retrieval | 2017
Faegheh Hasibi; Krisztian Balog; Darío Garigliotti; Shuo Zhang
We introduce Nordlys, a toolkit for entity-oriented and semantic search. It provides functionality for entity cataloging, entity retrieval, entity linking, and target type identification. Nordlys may be used as a Python library or as a RESTful API, and also comes with a web-based user interface. The toolkit is open source and is available at http://nordlys.cc.
international acm sigir conference on research and development in information retrieval | 2017
Darío Garigliotti; Krisztian Balog
We address the problem of generating query suggestions to support users in completing their underlying tasks (which motivated them to search in the first place). Given an initial query, these query suggestions should provide a coverage of possible subtasks the user might be looking for. We propose a probabilistic modeling framework that obtains keyphrases from multiple sources and generates query suggestions from these keyphrases. Using the test suites of the TREC Tasks track, we evaluate and analyze each component of our model.
european conference on information retrieval | 2018
Heng Ding; Shuo Zhang; Darío Garigliotti; Krisztian Balog
We address the task of generating query suggestions for task-based search. The current state of the art relies heavily on suggestions provided by a major search engine. In this paper, we solve the task without reliance on search engines. Specifically, we focus on the first step of a two-stage pipeline approach, which is dedicated to the generation of query suggestion candidates. We present three methods for generating candidate suggestions and apply them on multiple information sources. Using a purpose-built test collection, we find that these methods are able to generate high-quality suggestion candidates.
european conference on information retrieval | 2018
Darío Garigliotti; Krisztian Balog
Entity-oriented search deals with a wide variety of information needs, from displaying direct answers to interacting with services. In this work, we aim to understand what are prominent entity-oriented search intents and how they can be fulfilled. We develop a scheme of entity intent categories, and use them to annotate a sample of queries. Specifically, we annotate unique query refiners on the level of entity types. We observe that, on average, over half of those refiners seek to interact with a service, while over a quarter of the refiners search for information that may be looked up in a knowledge base.
conference on information and knowledge management | 2018
Darío Garigliotti; Krisztian Balog
We address the problem of constructing a knowledge base of entity-oriented search intents. Search intents are defined on the level of entity types, each comprising of a high-level intent category (property, website, service, or other), along with a cluster of query terms used to express that intent. These machine-readable statements can be leveraged in various applications, e.g., for generating entity cards or query recommendations. By structuring service-oriented search intents, we take one step towards making entities actionable. The main contribution of this paper is a pipeline of components we develop to construct a knowledge base of entity intents. We evaluate performance both component-wise and end-to-end, and demonstrate that our approach is able to generate high-quality data.
international conference on the theory of information retrieval | 2017
Darío Garigliotti; Krisztian Balog
text retrieval conference | 2016
Darío Garigliotti; Krisztian Balog
international conference on the theory of information retrieval | 2017
Darío Garigliotti; Krisztian Balog
international acm sigir conference on research and development in information retrieval | 2018
Darío Garigliotti