Analysis of the Impact of Artificial Intelligence on College Students' Learning

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Abstract

Using factor analysis method to evaluate the impact of artificial intelligence on college students' learning. By using SPSS software to test the reliability and validity of the questionnaire, key factors were selected and a factor analysis evaluation model was constructed, revealing the key factors that affect the understanding of artificial intelligence among science and engineering freshmen. This study explores students' behavior and attitudes towards the use of artificial intelligence learning tools, including time investment, proportion of using artificial intelligence tools to complete assignments, participation in online activities, use of artificial intelligence learning tools, perspectives on replacing teachers with artificial intelligence tools, and recognition of the advantages of learning software over traditional classroom teaching. By analyzing the factor load matrix and scores, the importance of each factor can be explained. These technologies provide in-depth insights into the impact of artificial intelligence. The establishment of the model reveals the key factors that affect college students and obtains ratings for each factor. Finally, a rating table was generated and compared, and the results were evaluated and analyzed. In summary, through factor analysis, we can comprehensively evaluate the impact of artificial intelligence on college students' learning and provide useful references for further research and educational practice.
人工智能对大学生学习的影响分析
运用因子分析法评价人工智能对大学生学习的影响。运用SPSS软件对问卷进行信度和效度检验,选取关键因素,构建因子分析评价模型,揭示影响理工科新生对人工智能理解的关键因素。本研究探讨了学生对使用人工智能学习工具的行为和态度,包括时间投入、使用人工智能工具完成作业的比例、在线活动的参与、人工智能学习工具的使用、用人工智能工具取代教师的观点,以及对学习软件相对于传统课堂教学优势的认识。通过分析因子负荷矩阵和得分,可以解释各因子的重要性。这些技术为人工智能的影响提供了深入的见解。模型的建立揭示了影响大学生的关键因素,并对每个因素进行了评分。最后生成评分表进行比较,并对结果进行评价和分析。综上所述,通过因子分析,我们可以综合评价人工智能对大学生学习的影响,为进一步的研究和教育实践提供有益的参考。
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