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A decision support engine: Heuristic review analysis on information extraction system and mining comparable objects from comparable concepts (Decision support engine)

机译:决策支持引擎:对信息提取系统进行启发式审查分析,并从可比概念中挖掘可比对象(决策支持引擎)

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Decision making involves comparing solution with each other in Decision support but it also necessary recommend which objects are comparable and in what way. This is challenging Question in data and knowledge processing, which urges for better pattern mining. Today's web is web of document where we find reviews, complaints, feedbacks posted on blogs, e-commerce websites and social networks which are rich source of knowledge for pattern mining. Research presents analyzing comparable question and then extraction of information for two objects as comparable and if not recommendation on objects comparable, if comparable answers. We propose a Decision support Engine that Answers queries asked by finding comparable objects if not comparable identifying user search intent find comparable object and answer with key values comparing them. Current state of art research system check if objects are comparable if not they don't provide recommendation to user for comparable objects. Supervised methods are limited to set of input and expected output, whereas unsupervised system output at times is false positive. In order to overcome this limitation semi-supervised methodology is used to develop algorithm for mining. This article is outcome of Methodical summary of literature on current research scope in data mining and NLP. Precisely it is analysis on abstract methodology and research scope on 24 appropriate manuscripts retrieved as per our research domain. The search contributes to field of Information retrieval and web search by solving five Research Question and major issues and challenges with procedures. Types of patterns that have been extracted in previous approaches with new learned method to extract complex patterns. In General review consequences demonstrate as many scholars have worked on pattern mining and decision support system there is need of precision and accuracy in pattern mining. Evaluation of research needs to be tested with various parameters this research evaluates decision engine with Mean average precision (MAP) and feedback rating of user to answers produced by decision engine, with regular evaluation of precision and recall.
机译:决策过程涉及在决策支持中相互比较解决方案,但也有必要建议哪些对象是可比较的以及以什么方式可比较。这是数据和知识处理中的挑战性问题,它要求更好的模式挖掘。今天的网络是文档的网络,我们可以在其中找到评论,投诉,发布在博客,电子商务网站和社交网络上的反馈,这些都是丰富的模式挖掘知识来源。研究提出分析可比问题,然后将两个对象的信息提取为可比对象,如果不建议,则建议可比对象(如果可比答案)。我们提出了一种决策支持引擎,该引擎可以通过查找可比较的对象来回答通过查找可比较的对象提出的查询,如果没有可识别的用户搜索意图,则可以找到可比较的对象并通过比较它们的键值进行回答。当前的技术研究系统检查对象是否可比,如果不能,则不向用户提供可比较对象的推荐。有监督的方法仅限于一组输入和预期输出,而无监督的系统输出有时为假阳性。为了克服该限制,使用半监督方法来开发挖掘算法。本文是关于数据挖掘和自然语言处理当前研究范围的方法性文献综述的成果。准确地说,它是对抽象方法的分析,并根据我们的研究领域对24种合适的手稿进行了研究范围的分析。该搜索通过解决五个研究问题以及程序的主要问题和挑战,为信息检索和网络搜索领域做出了贡献。在以前的方法中已提取的模式类型以及使用新的学习方法来提取复杂模式的模式类型。在一般回顾中,结果表明,随着许多学者致力于模式挖掘和决策支持系统的研究,在模式挖掘中需要精度和准确性。研究评估需要使用各种参数进行测试。本研究评估决策引擎的平均平均精度(MAP)和用户对决策引擎产生的答案的反馈评级,并定期评估精度和召回率。

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