Forecasting Binary Economic Events in Modern Mercantilism: Traditional methodologies coupled with PCA and K-means Quantitative Analysis of Qualitative Sentimental Data
By: Sebastian Kot
Potential Business Impact:
Tracks countries becoming more selfish with trade.
This paper examines Modern Mercantilism, characterized by rising economic nationalism, strategic technological decoupling, and geopolitical fragmentation, as a disruptive shift from the post-1945 globalization paradigm. It applies Principal Component Analysis (PCA) to 768-dimensional SBERT-generated semantic embeddings of curated news articles to extract orthogonal latent factors that discriminate binary event outcomes linked to protectionism, technological sovereignty, and bloc realignments. Analysis of principal component loadings identifies key semantic features driving classification performance, enhancing interpretability and predictive accuracy. This methodology provides a scalable, data-driven framework for quantitatively tracking emergent mercantilist dynamics through high-dimensional text analytics
Similar Papers
The New Quant: A Survey of Large Language Models in Financial Prediction and Trading
Portfolio Management
Helps computers make smart money choices from news.
Geopolitics, Geoeconomics and Risk:A Machine Learning Approach
Machine Learning (Stat)
News helps predict country money risk better.
Pattern Recognition of Aluminium Arbitrage in Global Trade Data
General Economics
Finds hidden illegal money in metal shipping.