基于人工神经网络和多元线性回归模型的老年人情感孤独和社会孤独评估

Hanife Akgül, Esma Uzunhisarlikçi, E. Kavuncuoglu
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引用次数: 2

摘要

近年来,随着数据量的增加,对这些数据进行分析所需技术的发展,使得人工智能更容易进入各个领域。本研究采用《老年人孤独感量表》作为因变量测量老年人的孤独感水平,并利用人工智能和统计技术对所获得的情感和社会孤独感参数的可预测性进行研究。为此,我们采用了不同的量表来检测情感孤独(EL)和社会孤独(SL),并在量表中使用了不同的输入参数。在本研究中,我们设计了一个专家系统,该系统采用人工神经网络(ANN) -机器学习算法和多元线性回归(MLR)统计方法,通过输入值来估计SL和EL值。使用均方根误差(RMSE)和相关系数(R)参数评价专家系统的预测性能。当对性能标准进行分析时,发现ANN是SL和EL值的最佳预测因子。通过本研究开发的专家系统,可以通过输入未包含在样本中的问卷回答来估计个人的社会或情感孤独。
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ESTIMATION OF EMOTIONAL AND SOCIAL LONELINESS IN ELDERS WITH THE DEVELOPED ARTIFICIAL NEURAL NETWORKS AND MULTIPLE LINEAR REGRESSION MODELS
In recent years, with the increase in the amount of data, the development of the technology required for the analysis of this data has made it easier for artificial intelligence to enter all areas. In this study, "Loneliness Scale for the Elderly" was used to measure loneliness level as a dependent variable, and the predictability of emotional and social loneliness parameters obtained was investigated with artificial intelligence and statistical techniques. For this reason, various scales were used to examine Emotional Loneliness (EL), and Social Loneliness (SL) and various input parameters were used in the scales. In this study, we designed an expert system which uses the Artificial Neural Network (ANN) - Machine Learning Algorithm and Multiple Linear Regression (MLR) statistical methods to estimate the SL and EL values by feeding with input values. Root Mean Squared Error (RMSE) and Correlation Coefficient (R) parameters were used to evaluate the predictive performance of the expert system. When the performance criteria were analyzed, it was found that ANN was the best predictor of SL and EL values. Social or emotional loneliness of individuals can be estimated by entering the questionnaire responses that are not included in the sample through the expert system developed in this study.
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