The statistical distances between countries, calculated for various moving
average time windows, are mapped into the ultrametric subdominant space as in
classical Minimal Spanning Tree methods. The Moving Average Minimal Length Path
(MAMLP) algorithm allows a decoupling of fluctuations with respect to the mass
center of the system from the movement of the mass center itself. A Hamiltonian
representation given by a factor graph is used and plays the role of cost
function. The present analysis pertains to 11 macroeconomic (ME) indicators,
namely the GDP (x1), Final Consumption Expenditure (x2), Gross Capital
Formation (x3), Net Exports (x4), Consumer Price Index (y1), Rates of Interest
of the Central Banks (y2), Labour Force (z1), Unemployment (z2), GDP/hour
worked (z3), GDP/capita (w1) and Gini coefficient (w2). The target group of
countries is composed of 15 EU countries, data taken between 1995 and 2004. By
two different methods (the Bipartite Factor Graph Analysis and the Correlation
Matrix Eigensystem Analysis) it is found that the strongly correlated countries
with respect to the macroeconomic indicators fluctuations can be partitioned
into stable clusters