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      Global Entity Ranking Across Multiple Languages

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          Abstract

          We present work on building a global long-tailed ranking of entities across multiple languages using Wikipedia and Freebase knowledge bases. We identify multiple features and build a model to rank entities using a ground-truth dataset of more than 10 thousand labels. The final system ranks 27 million entities with 75% precision and 48% F1 score. We provide performance evaluation and empirical evidence of the quality of ranking across languages, and open the final ranked lists for future research.

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          Ranking very many typed entities on wikipedia

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            Entity ranking in Wikipedia

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              Klout Score: Measuring Influence Across Multiple Social Networks

              In this work, we present the Klout Score, an influence scoring system that assigns scores to 750 million users across 9 different social networks on a daily basis. We propose a hierarchical framework for generating an influence score for each user, by incorporating information for the user from multiple networks and communities. Over 3600 features that capture signals of influential interactions are aggregated across multiple dimensions for each user. The features are scalably generated by processing over 45 billion interactions from social networks every day, as well as by incorporating factors that indicate real world influence. Supervised models trained from labeled data determine the weights for features, and the final Klout Score is obtained by hierarchically combining communities and networks. We validate the correctness of the score by showing that users with higher scores are able to spread information more effectively in a network. Finally, we use several comparisons to other ranking systems to show that highly influential and recognizable users across different domains have high Klout scores.
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                Author and article information

                Journal
                2017-03-17
                Article
                10.1145/3041021.3054213
                1703.06108
                ab7fd2c9-714f-4405-9bbe-f9ddee163496

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Custom metadata
                2 Pages, 1 Figure, 2 Tables, WWW2017 Companion, WWW 2017 Companion
                cs.IR cs.CL cs.SI

                Social & Information networks,Theoretical computer science,Information & Library science

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