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A Computational Narrative Construction Method With Applications In Organizational Learning Of Social Service Organizations

机译:一种计算叙事建构方法及其在社会服务组织组织学习中的应用

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Acquisition of knowledge must be interwoven with the process of applying it. However, traditional training methods which provide abstract knowledge have shown ineffective for gaining experience of the work. In order to solve this problem, more and more researchers have included narrative in simulation, which is known as narrative simulation. By providing the narratives, participants recognize the choices, decisions, and experience that lead to the consequences of those decisions. It has been proven that narrative simulation is very useful in facilitating in-depth learning and reflective learning. However, conventional methods of data collection and narrative construction for narrative simulation are labor intensive and time consuming. They make use of previous narratives manually and directly. They are inadequate to cope with the fast moving world where knowledge is changing rapidly. In order to provide a way for facilitating the construction of narrative simulation, a novel computational narrative construction method is proposed. By incorporating technologies of knowledge-based system (KBS), computational linguistics, and artificial intelligence (AI), the proposed method provides an efficient and effective way for collecting narratives and automating the construction of narratives. The method converts the unstructured narratives into a structural representation for abstraction and facilitating computing processing. Moreover, it constructs the narratives that combine multiple narratives into a single narrative by applying a forecasting algorithm. The proposed method was successfully implemented in early intervention in mental health care of a social service company in Hong Kong since the case records in that process have structural similarities to narrative. The accuracies of data conversion and predictive function were measured based on recall and precision and encouraging results were obtained. High recall and precision are achieved in the data conversion function, and high recall for the predictive function when new concepts are excluded. The results show that it is possible for converting multiple narratives into a single narrative automatically. Based on the approach, it helps to stimulate knowledge workers to explore new problem solving methods so as to increase the quality of their solutions.
机译:知识的获取必须与应用知识的过程交织在一起。但是,传统的提供抽象知识的培训方法对获得工作经验无效。为了解决这个问题,越来越多的研究人员将叙事包含在模拟中,这被称为叙事模拟。通过提供叙述,参与者可以识别导致这些决定后果的选择,决定和经验。事实证明,叙事模拟对于促进深度学习和反思学习非常有用。但是,用于叙事模拟的常规数据收集和叙事方法非常费力且费时。他们手动和直接使用以前的叙述。它们不足以应付知识日新月异的瞬息万变的世界。为了提供一种便于叙事仿真构建的方法,提出了一种新颖的计算叙事构建方法。通过结合基于知识的系统(KBS),计算语言学和人工智能(AI)的技术,该方法为收集叙事和使叙事的构建自动化提供了一种有效的途径。该方法将非结构化的叙述转换为结构化的表示形式,以进行抽象并促进计算处理。此外,它通过应用预测算法来构造将多个叙述组合为单个叙述的叙述。由于该过程中的案例记录与叙述的结构相似,因此该方法已成功应用于香港一家社会服务公司的精神卫生早期干预中。根据召回率和精度对数据转换和预测功能的准确性进行了测量,并获得了令人鼓舞的结果。在数据转换功能中可以实现较高的查全率和精度,在排除新概念时可以实现预测功能的高查全率。结果表明,可以将多个叙述自动转换为单个叙述。基于此方法,它有助于激发知识工作者探索新的问题解决方法,从而提高其解决方案的质量。

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