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Reconciling contrasting views on economic complexity

Economics

Reconciling contrasting views on economic complexity

C. Sciarra, G. Chiarotti, et al.

Discover groundbreaking insights into how economic complexity can be simplified into a single metric, as explored by Carla Sciarra, Guido Chiarotti, Luca Ridolfi, and Francesco Laio. This study reveals how distinct methodologies can be harmonized using linear algebra and represents a significant leap in understanding innovation and economic growth dynamics.... show more
Abstract
Summarising the complexity of a country's economy in a single number is the holy grail for scholars engaging in data-based economics. In a field where the Gross Domestic Product remains the preferred indicator for many, economic complexity measures, aiming at uncovering the productive knowledge of countries, have been stirring the pot in the past few years. The commonly used methodologies to measure economic complexity produce contrasting results, undermining their acceptance and applications. Here we show that these methodologies – apparently conflicting on fundamental aspects – can be reconciled by adopting a neat mathematical perspective based on linear-algebra tools within a bipartite-networks framework. The obtained results shed new light on the potential of economic complexity to trace and forecast countries' innovation potential and to interpret the temporal dynamics of economic growth, possibly paving the way to a micro-foundation of the field.
Publisher
Nature Communications
Published On
Jul 03, 2020
Authors
Carla Sciarra, Guido Chiarotti, Luca Ridolfi, Francesco Laio
Tags
Economic complexity
Data-driven economics
Method of Reflections
Fitness and Complexity
Linear algebra
Bipartite networks
Innovation prediction
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