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An Efficient Mechanism for Stemming and Tagging:The Case of Greek Language

机译:词干和标记的有效机制:以希腊语为例

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摘要

In an era that, searching the WWW for information becomes a tedious task, it is obvious that mainly search engines and other data mining mechanisms need to be enhanced with characteristics such as NLP in order to better analyze and recognize user queries and fetch data. We present an efficient mechanism for stemming and tagging for the Greek language. Our system is constructed in such a way that can be easily adapted to any existing system and support it with recognition and analysis of Greek words. We examine the accuracy of the system and its ability to support peRSSonal a medium constructed for offering meta-portal news services to internet users. We present experimental evaluation of the system compared to already existing stemmers and taggers of the Greek language and we prove the higher efficiency and quality of results of our system.
机译:在当今时代,在WWW上搜索信息成为一项繁琐的任务,显而易见的是,主要需要增强搜索引擎和其他数据挖掘机制的功能,例如NLP,以便更好地分析和识别用户查询并获取数据。我们提出了一种用于阻止和标记希腊语的有效机制。我们的系统以易于适应任何现有系统的方式构建,并通过希腊语单词的识别和分析来支持它。我们检查了系统的准确性及其支持peRSSonal的能力,peRSSonal是为向互联网用户提供元门户新闻服务而构建的一种媒介。与希腊语现有的词干提取器和标记器相比,我们对系统进行了实验评估,我们证明了系统结果的更高效率和质量。

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