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Ontology Mapping of Indian Medicinal Plants with Standardized Medical Terms

机译:具有标准化医学术语的印度药用植物的本体映射

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Problem statement: World Wide Web (WWW) consisting large volume of information related with medicinal plants. However health care recommendation with Indian Medicinal Plants becomes complicated because valuable Information about medicinal resources as plants is scattered, in text form and unstructured. Search engines are not quite efficient and require excessive manual processing. Therefore search becomes difficult for the ordinary users to find the medicinal uses of herbal plants from the web. And another problem is that the domain experts could not able to map the medicinal uses of herbal plants with the existing standardized medical terms. Mapping the existing ontology introduces the problem of finding the similarity between the terms and relationships. Finding the solution to perform automatic mapping is another major challenge to be solved. Approach: To address these issues we developed a Knowledge framework for the Indian Medicinal Plants (KIMP). Knowledge framework includes the ontology creation, user interface for querying the system. Jena is used to build semantic web applications with the ontology representation of Resource Description Framework (RDF) and Web Ontology Language (OWL). SPARQL Protocol and RDF Query Language (SPARQL) is used to retrieve various query patterns. Automated mapping is achieved by considering lexical and edge based relatedness. Results: The user interface is demonstrated for five thousand concepts, which gives the related information from Wikipedia web page in three languages. Mapping recommendation by the lexical similarity Jaccard algorithm gives 27% and Jaro Winkler algorithm gives 60%. Edge based relationship using WuPalmer algorithm gives 93% mapping recommendation. These are analyzed and compared with our algorithm based on WuPalmer gives more specific mapping results than WuPalmer with 71%. Conclusion: Thus it possible to find the specific resultant web page based on the user requirement in three different languages. The mapping with standardized ontology gives more improvement in analyzing the performance of the medicinal plants and their uses.
机译:问题陈述:万维网(WWW)包含与药用植物相关的大量信息。但是,印度药用植物的医疗保健建议变得非常复杂,因为有关药用资源的有价值信息因为植物是分散的,呈文本形式且是非结构化的。搜索引擎效率不高,需要过多的手动处理。因此,对于普通用户而言,搜索变得困难,从而无法从网络上找到草药植物的药用用途。另一个问题是领域专家无法使用现有的标准化医学术语来绘制草药的药用用途。映射现有的本体会引入查找术语和关系之间相似性的问题。寻找执行自动映射的解决方案是要解决的另一个主要挑战。方法:为了解决这些问题,我们为印度药用植物(KIMP)开发了知识框架。知识框架包括本体创建,用于查询系统的用户界面。 Jena用于使用资源描述框架(RDF)和Web本体语言(OWL)的本体表示来构建语义Web应用程序。 SPARQL协议和RDF查询语言(SPARQL)用于检索各种查询模式。通过考虑词法和基于边的相关性来实现自动映射。结果:演示了五千个​​概念的用户界面,该界面以三种语言提供了来自Wikipedia网页的相关信息。词汇相似度的映射推荐Jaccard算法给出27%,Jaro Winkler算法给出60%。使用WuPalmer算法的基于边缘的关系给出了93%的映射建议。将这些分析并与我们基于WuPalmer的算法进行比较,得出的映射结果比具有71%的WuPalmer的映射结果更具体。结论:因此,可以根据用户需求以三种不同的语言找到特定的结果网页。具有标准化本体的映射在分析药用植物的性能及其用途方面提供了更大的改进。

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