28 research outputs found

    Document Word Clouds: Visualising Web Documents as Tag Clouds to Aid Users in Relevance Decisions

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    Περιέχει το πλήρες κείμενοInformation Retrieval systems spend a great effort on determining the significant terms in a document. When, instead, a user is looking at a document he cannot benefit from such information. He has to read the text to understand which words are important. In this paper we take a look at the idea of enhancing the perception of web documents with visualisation techniques borrowed from the tag clouds of Web 2.0. Highlighting the important words in a document by using a larger font size allows to get a quick impression of the relevant concepts in a text. As this process does not depend on a user query it can also be used for explorative search. A user study showed, that already simple TF-IDF values used as notion of word importance helped the users to decide quicker, whether or not a document is relevant to a topic

    Relativistic quantum transport theory of hadronic matter: the coupled nucleon, delta and pion system

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    We derive the relativistic quantum transport equation for the pion distribution function based on an effective Lagrangian of the QHD-II model. The closed time-path Green's function technique, the semi-classical, quasi-particle and Born approximation are employed in the derivation. Both the mean field and collision term are derived from the same Lagrangian and presented analytically. The dynamical equation for the pions is consistent with that for the nucleons and deltas which we developed before. Thus, we obtain a relativistic transport model which describes the hadronic matter with NN, Δ\Delta and π\pi degrees of freedom simultaneously. Within this approach, we investigate the medium effects on the pion dispersion relation as well as the pion absorption and pion production channels in cold nuclear matter. In contrast to the results of the non-relativistic model, the pion dispersion relation becomes harder at low momenta and softer at high momenta as compared to the free one, which is mainly caused by the relativistic kinetics. The theoretically predicted free πNΔ\pi N \to \Delta cross section is in agreement with the experimental data. Medium effects on the πNΔ\pi N \to \Delta cross section and momentum-dependent Δ\Delta-decay width are shown to be substantial.Comment: 66 pages, Latex, 12 PostScript figures included; replaced by the revised version, to appear in Phys. Rev.

    Relativistic transport theory of N, \Delta and N^{*}(1440) interacting through σ\sigma, ω\omega and π\pi mesons

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    A self-consistent relativistic integral-differential equation of the Boltzmann-Uehling-Uhlenbeck-type for the NN^{*}(1440) resonance is developed based on an effective Lagrangian of baryons interacting through mesons. The closed time-path Green's function technique and semi-classical, quasi-particle and Born approximations are employed in the derivation. The non-equilibrium RBUU-type equation for the NN^{*}(1440) is consistent with that of nucleon's and delta's which we derived before. Thus, we obtain a set of coupled equations for the NN, Δ\Delta and NN^{*}(1440) distribution functions. All the NN^{*}(1440)-relevant in-medium two-body scattering cross sections within the NN, Δ\Delta and NN^{*}(1440) system are derived from the same effective Lagrangian in addition to the mean field and presented analytically, which can be directly used in the study of relativistic heavy-ion collisions. The theoretical prediction of the free pppp(1440)pp \to pp^{*}(1440) cross section is in good agreement with the experimental data. We calculate the in-medium N+NN+NN + N \to N + N^{*}, N+NN+NN^{*} + N \to N + N and N+NN+NN^{*} + N \to N^{*} + N cross sections in cold nuclear matter up to twice the nuclear matter density. The influence of different choices of the NNN^{*}N^{*} coupling strengths, which can not be obtained through fitting certain experimental data, are discussed. The results show that the density dependence of predicted in-medium cross sections are sensitive to the NNN^{*}N^{*} coupling strengths used. An evident density dependence will appear when a large scalar coupling strength of gNNσg_{N^{*}N^{*}}^{\sigma} is assumed.Comment: 64 pages, Latex, 13 PostScript figures include

    Topic dynamics in Weibo: a comprehensive study

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    Bag of biterms modeling for short texts

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    What's new? Analysing language-specific Wikipedia entity contexts to support entity-centric news retrieval

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    Representation of influential entities, such as celebrities and multinational corporations on the web can vary across languages, re- flecting language-specific entity aspects, as well as divergent views on these entities in different communities. An important source of multilingual background knowledge about influential entities is Wikipedia — an online community-created encyclopaedia — containing more than 280 language editions. Such language-specific information could be applied in entity-centric information retrieval applications, in which users utilise very simple queries, mostly just the entity names, for the relevant documents. In this article we focus on the problem of creating languagespecific entity contexts to support entity-centric, language-specific information retrieval applications. First, we discuss alternative ways such contexts can be built, including Graph-based and Article-based approaches. Second, we analyse the similarities and the differences in these contexts in a case study including 220 entities and five Wikipedia language editions. Third, we propose a context-based entity-centric information retrieval model that maps documents to aspect space, and apply languagespecific entity contexts to perform query expansion. Last, we perform a case study to demonstrate the impact of this model in a news retrieval application. Our study illustrates that the proposed model can effectively improve the recall of entity-centric information retrieval while keeping high precision, and provide language-specific results
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