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Dive into the research topics where Jean-Yves Delort is active.

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Featured researches published by Jean-Yves Delort.


acm conference on hypertext | 2003

Enhanced web document summarization using hyperlinks

Jean-Yves Delort; Bernadette Bouchon-Meunier; Maria Rifqi

This paper addresses the issue of Web document summarization. As textual content of Web documents is often scarce or irrelevant and existing summarization techniques are based on it, many Web pages and websites cannot be suitably summarized. We consider the context of a Web document by the textual content of all the documents linking to it. To summarize a target Web document, a context-based summarizer has to perform a preprocessing task, during which it will be decided which pieces of information in the source documents are relevant to the content of the target. Then a context-based summarizer faces two issues: first, the selected elements may partially deal with the topic of the target, second they may be related to the target and yet not contain any clues about the content of the target.In this paper we put forward two new summarization by context algorithms. The first one uses both the content and the context of the document and the second one is based only on the elements of the context. It is shown that summaries taking into account the context are usually much more relevant than those made only from the content of the target document. Optimal conditions of the proposed algorithms with respect to the sizes of the content and the context of the document to summarize are studied.


international world wide web conferences | 2010

Hierarchical cluster visualization in web mapping systems

Jean-Yves Delort

This paper presents a technique for visualizing large spatial data sets in Web Mapping Systems (WMS). The technique creates a hierarchical clustering tree, which is subsequently used to extract clusters that can be displayed at a given scale without cluttering the map. Voronoi polygons are used as aggregation symbols to represent the clusters. This technique retains hierarchical relationships between data items at different scales. In addition, aggregation symbols do not overlap, and their sizes and the number of points that they cover is controlled by the same parameter. A prototype has been implemented and tested showing the effectiveness of the method for visualizing large data sets in WMS.


user centric media | 2009

Automating Financial Surveillance

Maria Milosavljevic; Jean-Yves Delort; Ben Hachey; Bavani Arunasalam; Will Radford; James R. Curran

Financial surveillance technology alerts analysts to suspicious trading events. Our aim is to identify explainable false positives (e.g., caused by price-sensitive information in company news) and explainable true positives (e.g., caused by ramping in forums) by aligning these alerts with publicly available information. Our system aligns 99% of alerts, which will speed the analysts’ task by helping them to eliminate false positives and gather evidence for true positives more rapidly.


The International Journal of Banking and Finance | 2009

The Impact of Manipulation in Internet Stock Message Boards

Jean-Yves Delort; Bavani Arunasalam; Maria Milosavljevic; Henry Leung


International Journal of Electronic Commerce | 2011

Automatic Moderation of Online Discussion Sites

Jean-Yves Delort; Bavani Arunasalam; Cécile Paris


2010 Second International Conference on Advanced Geographic Information Systems, Applications, and Services | 2010

Vizualizing Large Spatial Datasets in Interactive Maps

Jean-Yves Delort


international world wide web conferences | 2003

Web Document Summarization by Context

Jean-Yves Delort; Bernadette Bouchon-Meunier; Maria Rifqi


international world wide web conferences | 2002

Facing Uncertainty in Link Recommender Systems

Jean-Yves Delort; Bernadette Bouchon-Meunier


acm conference on hypertext | 2003

CEA: A Content-Based Approach of Shift of Focus Detection in Hypermedia Navigation

Jean-Yves Delort; Bernadette Bouchon-Meunier; Maria Rifqi


starting ai researchers' symposium | 2002

Link Recommender Systems: the Suggestion by Cumulative Evidence Approach

Jean-Yves Delort; Bernadette Bouchon-Meunier

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Maria Rifqi

Pierre-and-Marie-Curie University

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Cécile Paris

Commonwealth Scientific and Industrial Research Organisation

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