MétaCan
← tous les travaux

Feature Selection for an Explainability Analysis in Detection of COVID-19 Active Cases from Facebook User-Based Online Surveys

2023· article· en· 0 citations· W6977186955 sur OpenAlex· 10.60692/w04d5-xe375

Pourquoi ce travail est-il dans la base ?

Une base qui oublie comment elle a trouvé un travail ne peut pas être vérifiée. Voici les voies qui ont admis celui-ci.

Porte sur le CanadaSon objet est le Canada, où que soient ses auteurs.

Aucune affiliation canadienne. Une base fondée sur la seule affiliation (le devis habituel) n'aurait jamais vu ce travail. C'est l'un des travaux qui justifient l'inversion de la base.

Le tri à trois modèles

les 1 000 travaux triés →

Les trois modèles l'ont jugé hors champ.

strate : about_only · poids de sondage : 3321.24 (l'échantillon est stratifié ; tout taux calculé sans le poids est faux)
Claude Opus 4.8OUT
genre : empirical
porte sur le Canada: non
confiance: high

Machine learning detection of COVID-19 cases from survey data.

GPT-5.6 (high)OUT
genre : empirical
porte sur le Canada: non
confiance: high

It develops a machine-learning model for detecting COVID-19 cases.

Grok 4.5OUT
genre : empirical
porte sur le Canada: non
confiance: high

ML detection of COVID-19 from survey data is applied epidemiology/AI, not metaresearch.

Résumé

ABSTRACT In this paper, we introduce a machine-learning approach to detecting COVID-19-positive cases from self-reported information. Specifically, the proposed method builds a tree-based binary classification model that includes a recursive feature elimination step. Based on Shapley values, the recursive feature elimination method preserves the most relevant features without compromising the detection performance. In contrast to previous approaches that use a limited set of selected features, the machine learning approach constructs a detection engine that considers the full set of features reported by respondents. Various versions of the proposed approach were implemented using three different binary classifiers: random forest (RF), light gradient boosting (LGB), and extreme gradient boosting (XGB). We consistently evaluate the performance of the implemented versions of the proposed detection approach on data extracted from the University of Maryland Global COVID-19 Trends and Impact Survey (UMD-CTIS) for four different countries: Brazil, Canada, Japan, and South Africa, and two periods: 2020 and 2021. We also compare the performance of the proposed approach to those obtained by state-of-the-art methods under various quality metrics: F1-score, sensitivity, specificity, precision, receiver operating characteristic (ROC), and area under ROC curve (AUC). It should be noted that the proposed machine learning approach outperformed state-of-the-art detection techniques in terms of the F1-score metric. In addition, this work shows the normalized daily case curves obtained by the proposed approach for the four countries. It should note that the estimated curves are compared to those reported in official reports. Finally, we perform an explainability analysis, using Shapley and relevance ranking of the classification models, to identify the most significant variables contributing to detecting COVID-19-positive cases. This analysis allowed us to determine the relevance of each feature and the corresponding contribution to the detection task.

Conservé avec la notice de tri, où il sert de preuve aux étiquettes ci-dessus.

La notice

Revue
Greater South Information System
Thématique
Data-Driven Disease Surveillance
Domaine
Medicine
Établissements canadiens
Organismes subventionnaires
Mots-clés
Feature selectionBoosting (machine learning)Gradient boostingRandom forestBinary classificationRanking (information retrieval)Receiver operating characteristicPattern recognition (psychology)Feature (linguistics)Binary number
Résumé présent dans OpenAlex
oui