An SVM Plait for Improving Affect Recognition in Intelligent Tutoring Systems

R. Janning, Carlotta Schatten, L. Schmidt-Thieme, G. Backfried, N. Pfannerer
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引用次数: 8

Abstract

Usually, in intelligent tutoring systems the task sequencing is done by means of expert and domain knowledge. In a former work we presented a new efficient task sequencer without using the expensive expert and domain knowledge. This task sequencer only uses former performances and decides about the next task according to Vygotsky's Zone of Proximal Development, that is to neither bore nor frustrate the student. We aim to support this task sequencer by a further automatically to gain information, namely students affect recognized from his speech input. However, the collection of the data from children needed for training an affect recognizer in this field is challenging as it is costly and complex and one has to consider privacy issues carefully. These problems lead to small data sets and limited performances of classification methods. Hence, in this work we propose an approach for improving the affect recognition in intelligent tutoring systems, which uses a special structure of several support vector machines with different input feature vectors. Furthermore, we propose a new kind of features for this problem. Different experiments with two real data sets show, that our approach is able to improve the classification performance on average by 49% in comparison to using a single classifier.
一种改进智能辅导系统情感识别的支持向量机方案
通常,在智能辅导系统中,任务排序是通过专家知识和领域知识来完成的。在以前的工作中,我们提出了一种新的高效的任务排序器,而不使用昂贵的专家和领域知识。这个任务排序器只使用以前的表现,并根据维果茨基的最近发展区来决定下一个任务,即既不让学生感到无聊也不让他们感到沮丧。我们的目标是支持这个任务序器通过进一步自动获取信息,即学生从他的语音输入中识别出的影响。然而,在这一领域训练情感识别器所需的儿童数据收集是具有挑战性的,因为它既昂贵又复杂,而且必须仔细考虑隐私问题。这些问题导致数据集较小,分类方法的性能有限。因此,在这项工作中,我们提出了一种改进智能辅导系统中情感识别的方法,该方法使用具有不同输入特征向量的几个支持向量机的特殊结构。在此基础上,提出了一种新的特征。两个真实数据集的不同实验表明,与使用单个分类器相比,我们的方法能够将分类性能平均提高49%。
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