首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >CLUSTERING AND BAYESIAN NETWORK APPROACHES FOR DISCOVERING HANDWRITING STRATEGIES OF PRIMARY SCHOOL CHILDREN
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CLUSTERING AND BAYESIAN NETWORK APPROACHES FOR DISCOVERING HANDWRITING STRATEGIES OF PRIMARY SCHOOL CHILDREN

机译:发现小学生手写策略的聚类和贝叶斯网络方法

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The aim of this paper is to assess the evolution in writing performance amongst typical pupils in primary education. More precisely, we propose ways of discovering groups of pupils sharing the same writing strategies during their primary education and methods for the temporal modeling of these pupils' writing strategies. For this purpose, online acquisition of writing and drawing tests have been performed three times during a period of one year for the same pupils under the same experimental conditions. A first approach, based on clustering, is applied to highlight clusters on a set of dynamic primitives chosen by an expert in the field of child development psychology. Results are presented by means of a comparative study between features of each group and writing tests. An analysis of within and between-strategies migration of pupils over time is also conducted to highlight pupils who change (or fail to change) their writing strategies during this period of one year. A second approach is used to model the problem by means of a probabilistic graphical model, i.e. a bayesian network. Expert knowledge partially determines the bayesian network structure, in which the writing strategy is represented by a hidden variable whose cardinality is estimated by the results of the clustering approach. By considering that each writing test is represented by its own (local) strategy and that there exists a global strategy which deals with each local strategy, we propose a Global Hierarchical. Model. The results of our hierarchical model structured using real data highlight, among others, two global strategies that correspond to normo-writer pupils and more advanced normo-writers. A longitudinal and temporal study of the evolution of the pupils in these strategies shows that these two strategies are consistent.
机译:本文的目的是评估初等教育中典型学生的写作表现的演变。更准确地说,我们提出了在初等教育中发现具有相同写作策略的学生群体的方法以及这些学生写作策略的时间建模方法。为此,在相同的实验条件下,对于一年级的同一学生,在一年的时间内进行了三次在线的笔试和绘画测试。基于聚类的第一种方法被应用于突出显示由儿童发展心理学领域的专家选择的一组动态原语上的聚类。通过对各组特征与写作测试之间的比较研究来呈现结果。还对学生随时间推移进行的策略内部和策略之间的迁移进行了分析,以突出显示在这一时期内改变(或无法改变)写作策略的学生。第二种方法用于通过概率图形模型即贝叶斯网络对问题进行建模。专家知识部分地确定了贝叶斯网络结构,其中,写入策略由一个隐藏变量表示,该变量的基数由聚类方法的结果估计。考虑到每个写作测试都由其自己的(本地)策略代表并且存在一个处理每个本地策略的全局策略,我们提出了“全局层次结构”。模型。我们使用真实数据构建的分层模型的结果重点突出了两种与规范编写者学生和更高级规范编写者相对应的全局策略。对这些策略中学生的发展进行的纵向和时间研究表明,这两种策略是一致的。

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