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research-replication

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End-to-End Python implementation of STRAPSim: a novel portfolio similarity metric from Li et al. (2025). Combines Random Forest proximity learning with residual-aware bipartite matching to quantify economic substitutability between ETF baskets. Full replication pipeline included.

  • Updated Oct 2, 2025
  • Jupyter Notebook

An end-to-end Python implementation of Cao et al.'s (2025) HLPPL methodology for the identification of financial (asset price) bubbles. Implements 7-parameter Log-Periodic Power Law model fitting, confidence-weighted sentiment analysis, regime-dependent 'BubbleScore' fusion, and Transformer-based forecasting with a backtesting framework.

  • Updated Oct 16, 2025
  • Jupyter Notebook

End-to-End Python implementation of Mo et al.'s (2025) ACT-Tensor methodology; a tensor completion framework for financial dataset imputation. Implements cluster-based CP decomposition, HOSVD factor extraction, temporal smoothing (CMA/EMA/Kalman), and downstream asset pricing evaluation. Transforms sparse data into dense machine readable data.

  • Updated Oct 20, 2025
  • Jupyter Notebook

End-to-End quantitative (Python) decision support system for optimizing economic resilience against disasters. Implements updated MRIA model using multi-regional supply-use tables, three-step optimization algorithm, and comprehensive impact assessment to identify vulnerabilities from production concentration and logistical constraints.

  • Updated Aug 17, 2025
  • Jupyter Notebook

End-to-End Python implementation of Koa et al.'s (2025) novel self-explaining quantitative framework. It combines cross-modal transformers, Time-GRPO reinforcement learning, and classifier-free guidance. Trains LLMs to perform financial technical analysis using LoRA fine-tuning. Includes backtesting with Markowitz portfolio optimization.

  • Updated Nov 14, 2025
  • Jupyter Notebook

End-to-End Python implementation of Dávila-Fernández & Sordi's (2025) methodology for FX-constrained growth modeling (in emerging markets). Features Bayesian state-space estimation via Gibbs sampling with FFBS algorithm, heterogeneous agent simulation (fundamentalists/chartists), and nonlinear dynamics analysis.

  • Updated Aug 31, 2025
  • Jupyter Notebook

End-to-End Python implementation of Wu et al.'s (2025) ICAIF'25 paper. It translates unstructured earnings press releases into quantifiable market signals. Implements oLDA topic modeling, Transformer embeddings (BERT/FinBERT/MPNET), GPT-4o interpretability, and rigorous econometric analysis.

  • Updated Oct 12, 2025
  • Jupyter Notebook

This project replicates the results of the paper "An Image is Worth 16x16 Words: Transformers for Image Recognition at Scale". The goal is to validate the performance of Vision Transformer (ViT) on image classification tasks using CIFAR-10.

  • Updated Mar 25, 2025
  • Jupyter Notebook

End-to-End Python implementation of the research methodology, from "Geometric Dynamics of Consumer Credit Cycles", by Sudjianto & Setiawan (2025). Implements Clifford Algebra embeddings and Linear Attention for explanatory macroeconomic analysis; i.e. economic regime analysis.

  • Updated Oct 23, 2025
  • Jupyter Notebook

End-to-End Python replication of Iadisernia & Camassa’s LLM macroeconomic forecasting methodology (ICAIF 2025). Implements: 2,368 synthetic economist profiles, 120,000+ GPT-4o forecasts across 50 European Central Bank (ECB) SPF rounds, a rigorous ablation study with Monte Carlo & binomial hypothesis testing.

  • Updated Nov 6, 2025
  • Jupyter Notebook

End-to-end Python implementation of Ma et al.'s (2025) matrix-variate diffusion index models for macroeconomic forecasting. Features α-PCA factor extraction, supervised screening, and ILS estimation for high-dimensional forecasting with preserved structural information.

  • Updated Aug 10, 2025
  • Jupyter Notebook

📈 Analyze press releases to predict earnings announcement returns using structured data and natural language processing techniques.

  • Updated Nov 15, 2025
  • Jupyter Notebook

End-to-End Python implementation of Massacci et al.'s (2025) novel Randomized Alpha Test for high-dimensional factor models. Features robust OLS estimation, Extreme Value Theory-based inference, Monte Carlo simulation engine, and rolling-window empirical analysis. Handles N>T panels with non-Gaussian, heteroskedastic returns.

  • Updated Jul 26, 2025
  • Jupyter Notebook

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