510,847 research outputs found

    Characterizing Interdisciplinarity of Researchers and Research Topics Using Web Search Engines

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    Researchers' networks have been subject to active modeling and analysis. Earlier literature mostly focused on citation or co-authorship networks reconstructed from annotated scientific publication databases, which have several limitations. Recently, general-purpose web search engines have also been utilized to collect information about social networks. Here we reconstructed, using web search engines, a network representing the relatedness of researchers to their peers as well as to various research topics. Relatedness between researchers and research topics was characterized by visibility boost-increase of a researcher's visibility by focusing on a particular topic. It was observed that researchers who had high visibility boosts by the same research topic tended to be close to each other in their network. We calculated correlations between visibility boosts by research topics and researchers' interdisciplinarity at individual level (diversity of topics related to the researcher) and at social level (his/her centrality in the researchers' network). We found that visibility boosts by certain research topics were positively correlated with researchers' individual-level interdisciplinarity despite their negative correlations with the general popularity of researchers. It was also found that visibility boosts by network-related topics had positive correlations with researchers' social-level interdisciplinarity. Research topics' correlations with researchers' individual- and social-level interdisciplinarities were found to be nearly independent from each other. These findings suggest that the notion of "interdisciplinarity" of a researcher should be understood as a multi-dimensional concept that should be evaluated using multiple assessment means.Comment: 20 pages, 7 figures. Accepted for publication in PLoS On

    THE RANGE OF COMMUNICATION TOPICS OF THE VISUALLY IMPAIRED IN THE INTERNET COMMUNITIES

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    Purpose of the study: This study discusses questions associated with the analysis of the most relevant communication topics of sight-disabled people in the Internet communities. According to the World Health Organization, there are about 1.3 billion people worldwide who live with a form of vision disorder. For solving a broad range of social problems of the sight-disabled, interest-based virtual social communities are created in the global internet network. By analyzing the content of these communities, one can judge about the most relevant topics of interest for sight-disabled people. Methodology: In this work, search and study of the Internet communities of sight-disabled people have been conducted in the VK (Russia)] social network. Using the Popsters service of analytics of social network posts and pages, the authors have analyzed the content of the said communities and identified the most relevant topics for this category of citizens. In the research, the hypothesis was used about a stable and significant statistical relation existing between the activity of users in the Internet communities associated with a particular topic and the level of significance of the selected topic for them. Main Findings: The development of information and communication technologies promotes socialization and integration of sight-disabled people into the civic society. The Internet communities of sight-disabled people focused on various topics are registered in the VK social network. The state has to more extensively support and develop technologies contributing to socialization and integration of sight-disabled people into the civic society. Applications of this study: The research findings can be of interest for specialists dealing with problems of socialization and social adaptation of people having vision limitations. Novelty/Originality of this study: It has been found that the Internet communities with the user-supplemented content have the highest quantity of users registered. The topics range of posts in these Internet communities is quite diverse. Posts asserting the traditional life principles: compassion, assistance, overcoming difficulties – win the highest users' response

    Precursors and Laggards: An Analysis of Semantic Temporal Relationships on a Blog Network

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    We explore the hypothesis that it is possible to obtain information about the dynamics of a blog network by analysing the temporal relationships between blogs at a semantic level, and that this type of analysis adds to the knowledge that can be extracted by studying the network only at the structural level of URL links. We present an algorithm to automatically detect fine-grained discussion topics, characterized by n-grams and time intervals. We then propose a probabilistic model to estimate the temporal relationships that blogs have with one another. We define the precursor score of blog A in relation to blog B as the probability that A enters a new topic before B, discounting the effect created by asymmetric posting rates. Network-level metrics of precursor and laggard behavior are derived from these dyadic precursor score estimations. This model is used to analyze a network of French political blogs. The scores are compared to traditional link degree metrics. We obtain insights into the dynamics of topic participation on this network, as well as the relationship between precursor/laggard and linking behaviors. We validate and analyze results with the help of an expert on the French blogosphere. Finally, we propose possible applications to the improvement of search engine ranking algorithms

    Controllability of Social Networks and the Strategic Use of Random Information

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    This work is aimed at studying realistic social control strategies for social networks based on the introduction of random information into the state of selected driver agents. Deliberately exposing selected agents to random information is a technique already experimented in recommender systems or search engines, and represents one of the few options for influencing the behavior of a social context that could be accepted as ethical, could be fully disclosed to members, and does not involve the use of force or of deception. Our research is based on a model of knowledge diffusion applied to a time-varying adaptive network, and considers two well-known strategies for influencing social contexts. One is the selection of few influencers for manipulating their actions in order to drive the whole network to a certain behavior; the other, instead, drives the network behavior acting on the state of a large subset of ordinary, scarcely influencing users. The two approaches have been studied in terms of network and diffusion effects. The network effect is analyzed through the changes induced on network average degree and clustering coefficient, while the diffusion effect is based on two ad-hoc metrics defined to measure the degree of knowledge diffusion and skill level, as well as the polarization of agent interests. The results, obtained through simulations on synthetic networks, show a rich dynamics and strong effects on the communication structure and on the distribution of knowledge and skills, supporting our hypothesis that the strategic use of random information could represent a realistic approach to social network controllability, and that with both strategies, in principle, the control effect could be remarkable

    Science Models as Value-Added Services for Scholarly Information Systems

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    The paper introduces scholarly Information Retrieval (IR) as a further dimension that should be considered in the science modeling debate. The IR use case is seen as a validation model of the adequacy of science models in representing and predicting structure and dynamics in science. Particular conceptualizations of scholarly activity and structures in science are used as value-added search services to improve retrieval quality: a co-word model depicting the cognitive structure of a field (used for query expansion), the Bradford law of information concentration, and a model of co-authorship networks (both used for re-ranking search results). An evaluation of the retrieval quality when science model driven services are used turned out that the models proposed actually provide beneficial effects to retrieval quality. From an IR perspective, the models studied are therefore verified as expressive conceptualizations of central phenomena in science. Thus, it could be shown that the IR perspective can significantly contribute to a better understanding of scholarly structures and activities.Comment: 26 pages, to appear in Scientometric
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