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Do complex models increase prediction of complex behaviours? Predicting driving ability in people with brain disorders

机译:复杂模型会增加对复杂行为的预测吗?预测脑部疾病患者的驾驶能力

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Prediction of complex behavioural tasks via relatively simple modelling techniques, such as logistic regression and discriminant analysis, often has limited success. We hypothesized that to more accurately model complex behaviour, more complex models, such as kernel-based methods, would be needed. To test this hypothesis, we assessed the value of six modelling approaches for predicting driving ability based on performance on computerized sensory - motor and cognitive tests (SMCTests ~(TM)) in 501 people with brain disorders. The models included three models previously used to predict driving ability (discriminant analysis, DA; binary logistic regression, BLR; and non- linear causal resource analysis, NCRA) and three kernel methods (support vector machine, SVM; product kernel density, PK; and kernel product density, KP). At the classification level, two kernel methods were substantially more accurate at classifying on-road pass or fail (SVM 99.6%, PK 99.8%) than the other models (DA 76%, BLR 78%, NCRA 74%, KP 81%). However, accuracy decreased substantially for all of the kernel models when cross-validation techniques were used to estimate prediction of on-road pass or fail in an independent referral group (SVM 73 - 76%, PK 72 - 73%, KP 71 - 72%) but decreased only slightly for DA (74 - 75%) and BLR (75 - 76%). Cross-validation of NCRA was not possible. In conclusion, while kernel-based models are successful at modelling complex data at a classification level, this is likely to be due to overfitting of the data, which does not lead to an improvement in accuracy in independent data over and above the accuracy of other less complex modelling techniques.
机译:通过相对简单的建模技术(例如逻辑回归和判别分析)对复杂的行为任务进行预测通常效果有限。我们假设要更准确地对复杂行为建模,就需要更复杂的模型,例如基于内核的方法。为了检验该假设,我们评估了六种建模方法的价值,该方法基于对501名脑部疾病患者的计算机感觉-运动和认知测验(SMCTests〜(TM))的性能来预测驾驶能力。这些模型包括三个先前用于预测驾驶能力的模型(判别分析,DA,二元逻辑回归,BLR和非线性因果资源分析,NCRA)和三个核方法(支持向量机,SVM;乘积核密度,PK;和和核心产品密度(KP)。在分类级别上,两种核心方法在对通过或失败进行分类(SVM 99.6%,PK 99.8%)方面比其他模型(DA 76%,BLR 78%,NCRA 74%,KP 81%)准确得多。 。但是,当使用交叉验证技术来估计独立推荐组中通过或失败的预测时,所有内核模型的准确性都会大大降低(SVM 73-76%,PK 72-73%,KP 71-72 %),但DA(74-75%)和BLR(75-76%)仅略有下降。无法对NCRA进行交叉验证。总而言之,尽管基于内核的模型在分类级别上成功地对复杂数据进行建模,但这很可能是由于数据的过拟合所致,这不会导致独立数据的准确性超过其他数据的准确性。不太复杂的建模技术。

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