Creating Stories from Socially Curated Microblog Messages

Social media such as microblogs have become so pervasive such that it is now possible to use them as sensors for real-world events and memes. While much recent research has focused on developing automatic methods for filtering and summarizing these data streams, we explore a different trend called s...

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Veröffentlicht in:IEICE Transactions on Information and Systems 2014/06/01, Vol.E97.D(6), pp.1557-1566
Hauptverfasser: KIMURA, Akisato, DUH, Kevin, HIRAO, Tsutomu, ISHIGURO, Katsuhiko, IWATA, Tomoharu, YEUNG, Albert AU
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container_end_page 1566
container_issue 6
container_start_page 1557
container_title IEICE Transactions on Information and Systems
container_volume E97.D
creator KIMURA, Akisato
DUH, Kevin
HIRAO, Tsutomu
ISHIGURO, Katsuhiko
IWATA, Tomoharu
YEUNG, Albert AU
description Social media such as microblogs have become so pervasive such that it is now possible to use them as sensors for real-world events and memes. While much recent research has focused on developing automatic methods for filtering and summarizing these data streams, we explore a different trend called social curation. In contrast to automatic methods, social curation is characterized as a human-in-the-loop and sometimes crowd-sourced mechanism for exploiting social media as sensors. Although social curation web services like Togetter, Naver Matome and Storify are gaining popularity, little academic research has studied the phenomenon. In this paper, our goal is to investigate the phenomenon and potential of this new field of social curation. First, we perform an in-depth analysis of a large corpus of curated microblog data. We seek to understand why and how people participate in this laborious curation process. We then explore new ways in which information retrieval and machine learning technologies can be used to assist curators. In particular, we propose a novel method based on a learning-to-rank framework that increases the curator's productivity and breadth of perspective by suggesting which novel microblogs should be added to the curated content.
doi_str_mv 10.1587/transinf.E97.D.1557
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source J-STAGE Free; Elektronische Zeitschriftenbibliothek - Frei zugängliche E-Journals
subjects Digital media
Filtering
Filtration
learning to rank
Messages
microblogging
Production methods
Productivity
Sensors
social curation
Social networks
title Creating Stories from Socially Curated Microblog Messages
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