Cheng Yongtian, Petrides K V
University College London (UCL), London, UK.
Educ Psychol Meas. 2024 Jul 25:00131644241262964. doi: 10.1177/00131644241262964.
Psychologists are emphasizing the importance of predictive conclusions. Machine learning methods, such as supervised neural networks, have been used in psychological studies as they naturally fit prediction tasks. However, we are concerned about whether neural networks fitted with random datasets (i.e., datasets where there is no relationship between ordinal independent variables and continuous or binary-dependent variables) can provide an acceptable level of predictive performance from a psychologist's perspective. Through a Monte Carlo simulation study, we found that this kind of erroneous conclusion is not likely to be drawn as long as the sample size is larger than 50 with continuous-dependent variables. However, when the dependent variable is binary, the minimum sample size is 500 when the criteria are balanced accuracy ≥ .6 or balanced accuracy ≥ .65, and the minimum sample size is 200 when the criterion is balanced accuracy ≥ .7 for a decision error less than .05. In the case where area under the curve (AUC) is used as a metric, a sample size of 100, 200, and 500 is necessary when the minimum acceptable performance level is set at AUC ≥ .7, AUC ≥ .65, and AUC ≥ .6, respectively. The results found by this study can be used for sample size planning for psychologists who wish to apply neural networks for a qualitatively reliable conclusion. Further directions and limitations of the study are also discussed.
心理学家们正在强调预测性结论的重要性。机器学习方法,如监督神经网络,已被用于心理学研究,因为它们自然适用于预测任务。然而,我们担心从心理学家的角度来看,拟合随机数据集(即序数自变量与连续或二元因变量之间不存在关系的数据集)的神经网络是否能提供可接受水平的预测性能。通过蒙特卡罗模拟研究,我们发现只要样本量大于50且因变量为连续变量,就不太可能得出这种错误结论。然而,当因变量为二元变量时,当标准为平衡准确率≥0.6或平衡准确率≥0.65时,最小样本量为500;当标准为平衡准确率≥0.7且决策误差小于0.05时,最小样本量为200。在将曲线下面积(AUC)用作指标的情况下,当将最小可接受性能水平分别设置为AUC≥0.7、AUC≥0.65和AUC≥0.6时,样本量分别需要100、200和500。本研究的结果可用于希望应用神经网络得出定性可靠结论的心理学家的样本量规划。还讨论了该研究的进一步方向和局限性。