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Mining online forums for valuable contributions

机译:挖掘在线论坛以做出宝贵贡献

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摘要

Web 2.0 resources such as online forum messages are of growing value in supporting education and research, and new information systems are aimed at synthesizing these resources into environments facilitating collaboration, learning and other goals. To support the automatic identification of valuable Web 2.0 resources, this paper presents an approach for estimating the information value of messages posted to an online forum. The system integrates key insights that include (1) how to reliably obtain large quantities of both positive and negative examples of such resources for use in training a machine learning algorithm, (2) the importance of considering authorship when analyzing the value of an online message, (3) the benefit of considering the subsequent message when analyzing a given message for its importance, and (4) how to develop and leverage a custom sentiment analysis model for use in automatically identifying high-value messages. In an evaluation using almost 90000 messages from an online forum, a baseline model for identifying valuable messages made over 50% more errors than the proposed model.
机译:诸如在线论坛消息之类的Web 2.0资源在支持教育和研究方面具有越来越大的价值,新的信息系统旨在将这些资源综合到有利于协作,学习和其他目标的环境中。为了支持自动识别有价值的Web 2.0资源,本文提出了一种估计发布到在线论坛的消息的信息价值的方法。该系统整合了关键见解,包括(1)如何可靠地获取大量此类资源的正例和负例用于训练机器学习算法,(2)在分析在线消息的价值时考虑作者身份的重要性,(3)在分析给定消息的重要性时考虑后续消息的好处,以及(4)如何开发和利用自定义情感分析模型以自动识别高价值消息。在使用来自在线论坛的近90000条消息进行的评估中,用于识别有价值消息的基准模型所犯的错误比建议的模型多50%以上。

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