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Data Extraction from Natural Language using Universal Networking Language

机译:使用通用网络语言从自然语言提取数据

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Data extraction, which falls under the area of Natural Language Processing (UNL), finds specific data from unstructured data. This research paves the way to introduce a unique technique on data extraction - providing the user with exactly what is asked without any mimicry of unsolicited data. The proposal sets logical and symmetrical relation between the search criteria and operational data. Since the data is unstructured and volume can be relatively high, we have emphasized highly on putting the data under categories - defined and used by the researchers for further exploitation of data. Universal Networking Language (UNL) is efficiently used to compare data and merge. A new approach of machine learning is presented herein that essentially augments efficiency of Natural Language Computing (NLC) and Cognitive Computing (CC). This proposed approach uses UNL relationship and successful test data shows much improved results and efficient generalization. Existing machine learning approaches are widely used on numeric data which are producing expected results but one key contention is the limitation of data type that can be handled. Current models fail to properly train on the semantics, logical consistency; many natural language properties are either ignored or prove too much of a task. Consequently, the approach presented herein this paper carries further positive points in producing meaningful and worthwhile result. Moreover, complex data that are consisted of alphanumeric data, sequence and resulting criteria can be executed correctly.
机译:在自然语言处理区域(unl)下落下的数据提取从非结构化数据中找到特定数据。这项研究铺平了在数据提取上引入独特技术的方法 - 为用户提供了没有任何未经请求的数据模仿的询问。该提案在搜索标准和操作数据之间设置逻辑和对称关系。由于数据是非结构化的,并且音量可以相对较高,因此我们非常强调的是将数据放在类类上 - 定义和使用的研究人员进行进一步利用数据。通用网络语言(UNL)有效地用于比较数据和合并。这里介绍了一种新的机器学习方法,基本上增加了自然语言计算(NLC)和认知计算(CC)的效率。这一提出的方法使用了不符合关系和成功的测试数据显示出大大提高的结果和有效的泛化。现有的机器学习方法广泛应用于生产预期结果的数字数据,但一个关键争用是可以处理的数据类型的限制。目前的模型无法正确地训练语义上,逻辑一致性;许多自然语言属性要么忽略或证明太多任务。因此,本文呈现的方法本文在生产有意义和有价值的结果中进行进一步的正面。此外,由字母数字数据,序列和产生标准组成的复杂数据可以正确地执行。

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