Hira A. Shafi, Ahmed Sikander, Ismail Mohamed Jamal, Jawwad Ahmad, M. Aboamer
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引用次数: 2
摘要
近年来,用自动化和程序化系统预测人格特征引起了人们的注意。具体来说,使用多模态数据来预测人格类型是人工智能中最重要的话题。有各种各样的技术和方法可用于人格类型识别。在所有方法中,最流行和使用最多的人格类型标识符是迈尔斯布里格斯类型指标(MBTI)类型指标。在本文中,将通过给出性能度量的数值和图形表示,对实现MBTI框架的所有机器学习经典算法进行详尽的比较分析。为了体验这项研究,我们使用了一种有监督的机器学习方法来执行和分析使用MBTI现象的不同分类器。这些模型是从数据集中学习来进行预测的。结果表明,集成Bagged树算法在训练时间为14秒的情况下,在11 K - Obs/sec的中等预测速度下,总体训练准确率为98.4%,测试准确率为70.75%,而粗树算法的训练时间为0.94009/sec,预测速度为390 (K - Obs/sec)。精细KNN和加权KNN算法的训练准确率为99.20%,集成提升树算法的测试准确率为75.51%。
A Machine Learning Approach for Personality Type Identification using MBTI Framework
In recent times, the prediction of personality traits with automated and programmed systems has caught human attention. Specifically, the use of multimodal data to predict personality types is the most considerable talk in artificial intelligence. There are a variety of techniques and methods available for personality type identification. The most popular and highly used personality type identifier is the Myers Briggs Type Indicator (MBTI) type indicator among all methods. In this paper, an exhaustive comparative analysis of all machine learning classical algorithms implementing the MBTI framework will be presented by giving a numerical and graphical representation of performance measures. To experience this study, a supervised machine learning approach is used to perform and analyze different classifiers using the phenomena of MBTI. The models are learned from a dataset to make predictions. The results show that the Ensemble Bagged Trees algorithm gives an overall good training accuracy of 98.4% and test accuracy of 70.75% at a moderate prediction speed of 11 K - Obs/sec by taking a training time of 14 sec. Other than that Coarse Tree algorithm in training time is 0.94009/sec and prediction speed 390 (K - Obs/sec), Fine KNN and Weighted KNN algorithm in training accuracy of 99.20% and Ensemble Boosted Trees algorithm in testing accuracy of 75.51% shows the efficient outcome respectively.