Business Cycle Synchronization in the EU: A Regional-Sectoral Look through Soft-Clustering and Wavelet Decomposition
Saulius Jokubaitis, Dmitrij Celov

TL;DR
This paper introduces a novel soft-clustering method combined with wavelet decomposition to analyze sectoral and regional business cycle synchronization in the EU, enhancing understanding of economic dynamics for decision-making.
Contribution
It develops a new soft-clustering approach with wavelet-based business cycle extraction, improving clustering accuracy and interpretability in economic synchronization analysis.
Findings
Identifies three distinct synchronization groups in EU data.
Supports the core-periphery hypothesis in EU business cycles.
Provides insights for cycle forecasting and risk diversification.
Abstract
This paper elaborates on the sectoral-regional view of the business cycle synchronization in the EU -- a necessary condition for the optimal currency area. We argue that complete and tidy clustering of the data improves the decision maker's understanding of the business cycle and, by extension, the quality of economic decisions. We define the business cycles by applying a wavelet approach to drift-adjusted gross value added data spanning over 2000Q1 to 2021Q2. For the application of the synchronization analysis, we propose the novel soft-clustering approach, which adjusts hierarchical clustering in several aspects. First, the method relies on synchronicity dissimilarity measures, noting that, for time series data, the feature space is the set of all points in time. Then, the ``soft'' part of the approach strengthens the synchronization signal by using silhouette measures. Finally, we…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Market Dynamics and Volatility · Monetary Policy and Economic Impact
