Evaluation on life satisfaction of left-behind junior high school children based on LVQ network

Yuanyuan Gan
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Abstract

A conceptually new approach to evaluating on life satisfaction of left-behind junior high school children using learning vector quantization neural network was proposed. The paper gives an introduction of learning vector quantization and discussed how this technique can be applied to evaluate on life satisfaction. The results indicated the following: Choosing the proper training samples, it is appropriate to evaluate on the left-behind children's life satisfaction by the LVQ neural network. According to the training samples' total scores of the six subscales and the corresponding grades information of their life satisfaction level, the life satisfaction grades of left-behind children were estimated accurately. For it is not necessary to evaluate their life satisfaction from six aspects such as school, school work, family, environment, friendship, and freedom in the process of estimating their total level of life satisfaction, the workload of evaluating on life satisfaction are sharp shorten. So the learning vector quantization neural network as an new approach evaluating on life satisfaction of left-behind junior high school children was effective, reliable, and with less labor and time.
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基于LVQ网络的初中留守儿童生活满意度评价
提出了一种基于学习向量量化神经网络的初中留守儿童生活满意度评价新方法。本文介绍了学习向量量化,并讨论了如何将该技术应用于生活满意度评估。结果表明:选择合适的训练样本,利用LVQ神经网络对留守儿童的生活满意度进行评价是合适的。根据训练样本六个分量表的总分和相应的生活满意度等级信息,准确估计留守儿童的生活满意度等级。由于在评估大学生总体生活满意度的过程中,不需要从学校、学业、家庭、环境、友谊、自由等六个方面来评估大学生的生活满意度,因此大大缩短了大学生生活满意度评估的工作量。因此,学习向量量化神经网络作为一种评价初中留守儿童生活满意度的新方法是有效、可靠、省力、省时的。
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