Recent Trends and Future Challenges in Learning from Data

Recent Trends and Future Challenges in Learning from Data

Wilhelm, Adalbert F. X.; Palumbo, Francesco; Davino, Cristina; Kestler, Hans A.

Springer International Publishing AG

08/2024

153

Mole

9783031544675

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Preface.- Building hierarchies of factors with disjoint factor analysis.- Uncertainty in Latent Trait Models and dimensionality reduction methods for complex data: an analysis of taxpayer perception on the Fiscal System.- The predictivity of access tests for university success.- Asynchronous and synchronous-asynchronous particle swarms.- The impact of the Covid-19 pandemic on modelling volatility and risk analysis of returns in selected European financial markets.- Asymmetric binary regression models for imbalanced datasets: an application to students' churn.- Computational models supporting decision-making in managing publication activity at Polish universities.- Stability of nonparametric methods for cognitive diagnostic assessment.- SMARTS: SeMi-supervised clustering for Assessment of Reviews using Topic and Sentiment.- The equitable and sustainable wellbeing through the pandemic. A first study to assess changes at local level in Italy.- Choice-Based Optimization under High-Dimensional MNL.- A first glance on co-evolution of Boolean networks to simulate the development of cross-talking systems in molecular biology.- Classification on polish fund market during COVID-19 pandemic - extreme risk modeling approach.
Data Analysis;Classification;Clustering;Statistical Models;Supervised Learning;Unsupervised Learning;Data Mining;Text Mining;Applied Statistics;Big Data