罗马尼亚的社交媒体和新闻项目的意见挖掘

Claudia Cardei, Filip Manisor, Traian Rebedea
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引用次数: 2

摘要

虽然针对英语存在性能良好的意见挖掘解决方案,但针对其他语言开发有效的解决方案要困难得多。此外,即使在英语中,如果处理的文本来自各种上下文(领域、来源等),结果也会严重恶化。我们展示了一个系统的几个实验的初步结果,该系统使用机器学习来识别手动注释的罗马尼亚语语料库中的观点。这个数据集包含了广泛来源的文本:流行的社交网站、博客、评论、新闻提供者和在线论坛。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Opinion mining for social media and news items in Romanian
Although opinion mining solutions with good performance exist for English, it is much more difficult to develop an effective solution for other languages. Moreover, even in English the results deteriorate strongly if the texts that are processed are from a variety of contexts (domains, sources, etc.) We present the preliminary results of several experiments with a system that uses machine learning in order to identify opinions in a corpus in Romanian that was manually annotated. This dataset contains texts from a wide range of sources: popular social networking sites, blogs, comments, news providers and online forums.
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