【24h】

An Hymn of an even Deeper Sentiment Analysis

机译:情感分析的赞歌

获取原文
获取原文并翻译 | 示例

摘要

A deeper understanding of what is going on in a given text is still one of the most interesting and challenging goals in NLP. Sentiment analysis has recently started to contribute to this area. We no longer just try to predict the polarity of whole product reviews but to distinguish various perspectives inherent to a text, namely, what the author is telling us, how he implicitly or explictely evaluates it and what his text tells us about the attitudes the entities in the text hold towards each other (or towards the mentioned objects, situations, or opinions of others). Other perspectives not yet taken by our systems include the common-sense perspective (what follows from the behaviour of an agent for his perception by the public) or the reader perspective: given that I have specified the pros and cons of my world view - which are the opponents and proponents of mine given the text at hand. Progress has been made in this direction. Sentiment inferences based on verb-specific polar lexicons and general inference rules have been proposed (see the work of Deng and Wiebe, for instance). Our preprocessing tools for the extraction of predicate argument structures or for semantic role labeling seem to be mature enough to support this kind of deep understanding reasonably well.
机译:深入了解给定文本的内容仍然是NLP中最有趣和最具挑战性的目标之一。情绪分析最近开始在这一领域做出贡献。我们不再只是试图预测整个产品评论的极性,而是要区分文本所固有的各种观点,即作者在告诉我们什么,他如何隐式或显式地评价文本以及他的文本告诉我们有关实体的态度在文本中彼此相对应(或对上述对象,情况或他人的观点)。我们的系统还没有采用的其他观点包括常识性观点(从代理人的行为中获得公众对他的理解)或读者观点:鉴于我已经指定了我的世界观点的优缺点-是本文的反对者和支持者。在这个方向上已经取得了进展。已经提出了基于动词特定的极性词典和一般推理规则的情感推理(例如,参见Deng和Wiebe的著作)。我们用于提取谓词参数结构或语义角色标签的预处理工具似乎已经足够成熟,可以合理地支持这种深度理解。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号