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Directional subset simulation method for reliability analysis Fundamental Bounds and Efficient Estimation for Dead-Time-Constrained Event Detection, with Application to Single-Photon Lidar Convex Hybrid Modeling: An Operator-Based Approach Mode-Shape Expansion Using Physics-Constrained Gaussian Process Regression StanBKT: Rethinking Parameter Estimation in Bayesian Knowledge Tracing Detecting and Correcting Sample-by-Sample Scale Distortion in RNA Sequencing Data Joint Bayesian models for validating spatial health-event databases against a gold standard: separating global and local discrepancies Global Sensitivity Analysis: a novel generation of mighty estimators based on rank statistics Trajectory-Oriented Optimization Via Adaptive Thompson Sampling And Grid Refinement: A Tutorial With The ADAPTIVE\_TS Package Joint Estimation of Marginal and Heterogeneous Treatment Effects A note on closed-form solutions for estimating sample size when externally validating a binary prediction model based on $C$-statistic precision Diffusion Fluid Antenna Systems for Resilient ISAC The frame problem in quantitative practice: ontological uncertainty and epistemic humility in an age of automated inference Concomitant DAG Learning: On the Roles of Noise Adaptivity, Sparsity, and Non-negativity Generalized Stochastic Approximation of the Log-Likelihood Ratio for Robust Sequential Change-Point Detection Generalized Rank Regression Regulatory Considerations for Using Artificial Intelligence Models to Reduce Sample Sizes in Registrational Studies A Direct Variance Estimation (DiVE) for Meta-Analysis of Median Differences Mixture-of-Finite-Mixtures Wishart Model for Clustering Covariance Matrices with an Application to Brain Functional Connectivity Sample correlation adjustments for robust Multi-fidelity Monte Carlo under limited pilot sampling Order-Optimal Sequential 1-Bit Mean Estimation in General Tail Regimes Linear Regression with Unknown Truncation Beyond Gaussian Features Online Change Point Detection for Multivariate Inhomogeneous Poisson Processes Time Series Enabling High-Accuracy Data Assimilation with Limited Ensembles via Machine Learning-Based Covariance Correction Field Theory of Data: Anomaly Detection via the Functional Renormalization Group. 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Anticipating Continued Global Fertility Decline via Neural Forecasting
Daniel Cigan · 2026-05-25 · via stat updates on arXiv.org

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Abstract:The accelerating shift toward low and ultra-low fertility has intensified the debate over whether countries now undergoing rapid decline are approaching stabilization or entering a more persistent low-fertility regime. Existing projection systems answer that question differently because they embed different assumptions about recovery and about the role of external drivers. To provide an empirical benchmark in this debate, we introduce NeuralTFR, an endogenous global forecasting framework based on a recurrent neural network. Drawing on a harmonized panel of historical fertility series from 196 countries and territories, the model pools cross-country information to learn demographic momentum and generate empirical prediction intervals via multi-quantile regression. Evaluated on a held-out period (2009--2023), NeuralTFR achieves lower point-forecast errors than a Naive Drift baseline and BayesTFR, the United Nations' Bayesian Hierarchical Model, while maintaining competitive uncertainty calibration. In forward projections to 2040, NeuralTFR points to broader exposure to low and very low fertility than BayesTFR, suggesting weaker support for near-term stabilization while still falling short of the most severe decline paths predicted by the Global Burden of Disease project.
Subjects: Applications (stat.AP)
Cite as: arXiv:2605.23858 [stat.AP]
  (or arXiv:2605.23858v1 [stat.AP] for this version)
  https://doi.org/10.48550/arXiv.2605.23858

arXiv-issued DOI via DataCite (pending registration)

Submission history

From: Facundo Morini [view email]
[v1] Fri, 22 May 2026 17:17:48 UTC (341 KB)