被调查者行为率估计模型:贝叶斯网络结构综合

A. Suvorova
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引用次数: 5

摘要

本文描述了贝叶斯信念网络模型的结构比较,该模型基于个体行为最近事件的数据进行了个体行为率估计。我们比较了两种类型的网络结构:基于专家的和基于数据的。对于模型学习和评估,我们使用了来自社交网络VKontakte的关于发布帖子集的数据。样本量为3803个用户,半年共785066个帖子;训练数据集包含75%的样本,其余25%作为测试数据集。基于数据结构的模型质量分数略高,而预测质量几乎相同:基于专家结构的模型准确率为90.5%,基于数据的模型准确率为89.6%。因此,这两个模型显示出非常相似的结果,例如,减少计算和应用基于专家的结构来解决实际问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Models for respondents' behavior rate estimate: Bayesian Network structure synthesis
The paper described the structure comparison of Bayesian Belief Network models for individual behavior rate estimate based on data about the last episodes of that behavior. We compared two types of network structures: expert-based and data-based. For model learning and evaluation we used data from social network VKontakte about episodes of publishing posts. The sample size was 3803 users with 785066 posts in total for the half-year period; training dataset included 75% of the sample, the rest 25% were used as test dataset. The data-based structure represented slightly better quality scores, while prediction quality was almost the same: 90.5% accuracy for model with expert-based structure and 89.6% accuracy for data-based model. Hence, both models showed quite similar results that allows, for example, reducing computations and applying expert-based structure for solving practical issues.
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