CFE-CMStatisrics 2025

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以下はCFE-CMStatistics 2025 で面白かった/見たかった公演備忘録です


CFE-CMStatistics 2025 講演備忘録


1. 時系列モデル・要因分析 (Factor & VAR Models)

発表テーマ(Dynamic factor stochastic volatility in mean model)とも関連が深い, 動的要因モデルやVARモデルの理論・応用に関するセッション群です. 高次元データに対する新しいアプローチが多く見られました.

  • Factor inference under common components in volatility
  • Identification and estimation of dynamic factor models
  • Bayesian dynamic factor models for high-dimensional matrix-valued time series
  • High-dimensional dynamic factor models: A selective survey
  • Flexible priors and restrictions for structural vector autoregressions
  • Forecasting with time-varying order-invariant structural vector autoregressions
  • Time-varying global VARs with application to interconnectedness, structural analysis, and nowcasting
  • Generalized impulse responses, multi-horizon projections, and causal mediation analysis in macroeconomics and finance
  • Dimension reduction in VAR models via informative lag selection

2. 計算効率と推定アルゴリズム (Computation & Algorithms)

大規模データや複雑なモデルの推定を可能にする, MCMCやガウス過程の新しい計算手法に注目しました.

  • A modified algorithm for MCMC in large dimensional models
  • Normalizing flows for posterior estimation under intractable likelihoods, with applications in astrostatistics
  • Stochastic gradient MCMC for massive geostatistical data
  • Vecchia-inducing-points full-scale approximations for Gaussian processes
  • Laplace approximations for Gaussian process and mixed effects quantile regression
  • Fast generalized spatial multilevel blockNNGP modelling

3. モデル選択とロバスト性 (Selection & Robustness)

ベイズ推定における変数選択, 外れ値への対応, モデルの平均化など, モデルの構造を決定したり, データのノイズに対する頑健性を確保したりする手法です.

  • Bayesian outlier detection for matrix-variate models
  • Bayesian group variable selection via penalized credible region
  • Bayesian model averaging in causal instrumental variable models
  • Choice of number of factors and clusters in Bayesian clustering factor models
  • Bayesian nonparametric models with BART components

4. 応用と特殊なデータへの対応 (Applications & Specialized Data)

計数データ, 構成データ, 極値など, 特殊な性質を持つデータや, 特定の応用分野に焦点を当てたモデルです.

  • Combining GARCH-MIDAS forecasts of US state-level volatility: The role of local and global EPU indices
  • Mixture of state space models for compositional data with an application to urban mobility analysis
  • Higher-order integer autoregression for count time series
  • Dynamic matrix factor model for counts data
  • Co-extremal shocks and VAR analysis
  • A zero-inflated Poisson latent position cluster model
  • Forecast reconciliation and multivariate GARCH
  • A regularized regression approach to global minimum variance allocation
  • Unified Bayesian nonparametric framework for ordinal, survival, and density regression using complementary log-log link
  • IRF and nowcasting with functional approaches and mixed-frequency data
  • Distributional outcome regression via quantile functions