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Effects of dataset size and interactions on the prediction performance of logistic regression and deep learning models

Alexandre Bailly, Corentin Blanc, Elie Francis, Thierry Guillotin, Fadi Jamal, Béchara Wakim, Pascal Roy

2021Computer Methods and Programs in Biomedicine240 citationsDOIOpen Access PDF

Abstract

BACKGROUND AND OBJECTIVE: Machine learning and deep learning models are very powerful in predicting the presence of a disease. To achieve good predictions, those models require a certain amount of data to train on, whereas this amount i) is generally limited and difficult to obtain; and, ii) increases with the complexity of the interactions between the outcome (disease presence) and the model variables. This study compares the ways training dataset size and interactions affect the performance of those prediction models. METHODS: To compare the two influences, several datasets were simulated that differed in the number of observations and the complexity of the interactions between the variables and the outcome. A few logistic regressions and neural networks were trained on the simulated datasets and their performance evaluated by cross-validation and compared using accuracy, F1 score, and AUC metrics. RESULTS: Models trained on simulated datasets without interactions provided good results: AUC close to 0.80 with either logistic regression or neural networks. Models trained on simulated dataset with order 2 interactions led also to AUCs close to 0.80 with either logistic regression or neural networks. Models trained on simulated datasets with order 4 interactions led to AUC close to 0.80 with neural networks and 0.85 with penalized logistic regressions. Whatever the interaction order, increasing the dataset size did not significantly affect model performance, especially that of machine learning models. CONCLUSION: Machine learning models were the less influenced by the dataset size but needed interaction terms to achieve good performance, whereas deep learning models could achieve good performance without interaction terms. Conclusively, with the considered scenarios, well-specified machine learning models outperformed deep learning models.

Topics & Concepts

Logistic regressionMachine learningArtificial intelligencePredictive modellingComputer scienceArtificial neural networkRegressionRegression analysisOutcome (game theory)StatisticsMathematicsMathematical economicsArtificial Intelligence in Healthcare and EducationMachine Learning in HealthcareExplainable Artificial Intelligence (XAI)
Effects of dataset size and interactions on the prediction performance of logistic regression and deep learning models | Litcius