Litcius/Paper detail

An Integrative Paradigm for Enhanced Stroke Prediction: Synergizing XGBoost and xDeepFM Algorithms

Weinan Dai, Yifeng Jiang, Chengjie Mou, Chongyu Zhang

202358 citationsDOIOpen Access PDF

Abstract

Stroke prediction plays a crucial role in preventing and managing this debilitating condition. In this study, we address the challenge of stroke prediction using a comprehensive dataset, and propose an ensemble model that combines the power of XGBoost and xDeepFM algorithms. Our work aims to improve upon existing stroke prediction models by achieving higher accuracy and robustness. Through rigorous experimentation, we validate the effectiveness of our ensemble model using the AUC metric. Through comparing our findings with those of other models in the field, we gain valuable insights into the merits and drawbacks of various approaches. This, in turn, contributes significantly to the progress of machine learning and deep learning techniques specifically in the domain of stroke prediction.

Topics & Concepts

Machine learningComputer scienceRobustness (evolution)Metric (unit)Artificial intelligenceEnsemble learningPredictive modellingStroke (engine)Field (mathematics)Predictive powerDeep learningEngineeringMathematicsGeneChemistryOperations managementPhilosophyMechanical engineeringPure mathematicsBiochemistryEpistemologyAcute Ischemic Stroke ManagementStroke Rehabilitation and RecoveryRetinal Imaging and Analysis
An Integrative Paradigm for Enhanced Stroke Prediction: Synergizing XGBoost and xDeepFM Algorithms | Litcius