Metodi e tecniche di trattamento automatico della lingua per l'estrazione di conoscenza dalla documentazione scolastica

IF 0.1 4区 教育学 Q4 EDUCATION & EDUCATIONAL RESEARCH
Cadmo Pub Date : 2020-12-01 DOI:10.3280/CAD2020-002005
Giulia Venturi, F. Dell'Orletta, Simonetta Montemagni, Elettra Morini, M. Sagri
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引用次数: 1

Abstract

In its daily activities, the school produces large amounts of textual data in response to different needs, ranging from planning activities, to supporting internal and external communication and self-assessment. These data represent a vast and varied information asset which needs to be profitably analysed to monitor and study ongoing phenomena in the field of education. To profile the contents conveyed by this continuously growing documenta¬tion, we propose advanced methods and techniques for knowledge extraction based on language technologies. The paper illustrates the first and promis¬ing results of the proposed methodology for monitoring educational strategies through time, space and different types of schools, starting from free texts. The methodology has been tested within two scenarios focusing on i) the analysis of the strategic choices and actions implemented by schools to achieve improvement and innovation objectives, and ii) the monitoring of the technical-professional and soft skills developed in School-Work Alternation experiences. Although preliminary, achieved results show that Natural Language Processing enabled methods and techniques can lead to effective and exhaustive school profiling.
从学校文献中提取知识的自动语言处理方法和技术
在日常活动中,学校根据不同的需求生成大量文本数据,从规划活动到支持内部和外部沟通和自我评估。这些数据代表了一种巨大而多样的信息资产,需要对其进行有益的分析,以监测和研究教育领域正在发生的现象。为了描述这个不断增长的文档所传达的内容,我们提出了基于语言技术的先进知识提取方法和技术。本文从自由文本开始,阐述了所提出的通过时间、空间和不同类型的学校监测教育策略的方法的第一个也是有希望的结果。该方法已在两个场景中进行了测试,重点是i)分析学校为实现改进和创新目标而实施的战略选择和行动,以及ii)监测在学校工作交替经验中培养的技术专业和软技能。虽然是初步的,但已经取得的结果表明,使用自然语言处理的方法和技术可以实现有效和详尽的学校概况分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Cadmo
Cadmo EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
0.20
自引率
0.00%
发文量
9
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