Extracting TFM Core Elements From Use Case Scenarios by Processing Structure and Text in Natural Language

IF 0.5 Q4 COMPUTER SCIENCE, THEORY & METHODS Applied Computer Systems Pub Date : 2019-12-01 DOI:10.2478/acss-2019-0012
Erika Nazaruka, J. Osis, Viktorija Gribermane
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引用次数: 0

Abstract

Abstract Extracting core elements of Topological Functioning Model (TFM) from use case scenarios requires processing of both structure and natural language constructs in use case step descriptions. The processing steps are discussed in the present paper. Analysis of natural language constructs is based on outcomes provided by Stanford CoreNLP. Stanford CoreNLP is the Natural Language Processing pipeline that allows analysing text at paragraph, sentence and word levels. The proposed technique allows extracting actions, objects, results, preconditions, post-conditions and executors of the functional features, as well as cause-effect relations between them. However, accuracy of it is dependent on the used language constructs and accuracy of specification of event flows. The analysis of the results allows concluding that even use case specifications require the use of rigor, or even uniform, structure of paths and sentences as well as awareness of the possible parsing errors.
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利用自然语言处理结构和文本从用例场景中提取TFM核心元素
摘要从用例场景中提取拓扑功能模型(TFM)的核心元素需要对用例步骤描述中的结构和自然语言结构进行处理。本文对其加工步骤进行了讨论。自然语言结构的分析是基于斯坦福CoreNLP提供的结果。斯坦福CoreNLP是自然语言处理管道,允许在段落,句子和单词级别分析文本。提出的技术允许提取功能特征的动作、对象、结果、前提条件、后置条件和执行者,以及它们之间的因果关系。然而,它的准确性取决于所使用的语言结构和事件流规范的准确性。对结果的分析可以得出这样的结论:即使是用例规范也需要使用严格的,甚至是统一的路径和句子结构,以及对可能的解析错误的认识。
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来源期刊
Applied Computer Systems
Applied Computer Systems COMPUTER SCIENCE, THEORY & METHODS-
自引率
10.00%
发文量
9
审稿时长
30 weeks
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