Among several developments, the field of Economic Complexity (EC) has notably seen the introduction of two new techniques. One is the Bootstrapped Selective Predictability Scheme (SPSb), which can provide quantitative forecasts of the Gross Domestic Product of countries. The other, Hidden Markov Model (HMM) regularisation, denoises the datasets typically employed in the literature. We contribute to EC along three different directions. First, we prove the convergence of the SPSb algorithm to a well-known statistical learning technique known as Nadaraya-Watson Kernel regression. The latter has significantly lower time complexity, produces deterministic results, and it is interchangeable with SPSb for the purpose of making predictions. Second,...
Evaluating the economies of countries and their relations with products in the global market is a ce...
Prior international segmentation studies have been static in that they have identified segments that...
We establish rates of convergences in time series forecasting using the statistical learning approac...
Among several developments, the field of Economic Complexity (EC) has notably seen the introduction ...
The Economic Fitness Index describes industrial completeness and comprehensively reflects product di...
Here we discuss a number of auxiliary results supporting the main findings of the principal paper an...
Two network measures known as the economic complexity index (ECI) and product complexity index (PCI)...
A popular approach in the investigation of the short-term behavior of a non-stationary time series i...
<div><p>We investigate a recent methodology we have proposed to extract valuable information on the ...
We analyse global export data within the Economic Complexity framework. We couple the new economic d...
In this master's thesis, hidden Markov models (HMM) are evaluated as a tool for forecasting movement...
As a result in the rapid growth of explainability methods, there is a significant interest, driven b...
We investigate a recent methodology we have proposed to extract valuable information on the competit...
In this paper we investigate the labour content of complex products. By exploiting O*NET information...
In this paper we analyze if higher complexity gives lower returns in structured products. Our unique...
Evaluating the economies of countries and their relations with products in the global market is a ce...
Prior international segmentation studies have been static in that they have identified segments that...
We establish rates of convergences in time series forecasting using the statistical learning approac...
Among several developments, the field of Economic Complexity (EC) has notably seen the introduction ...
The Economic Fitness Index describes industrial completeness and comprehensively reflects product di...
Here we discuss a number of auxiliary results supporting the main findings of the principal paper an...
Two network measures known as the economic complexity index (ECI) and product complexity index (PCI)...
A popular approach in the investigation of the short-term behavior of a non-stationary time series i...
<div><p>We investigate a recent methodology we have proposed to extract valuable information on the ...
We analyse global export data within the Economic Complexity framework. We couple the new economic d...
In this master's thesis, hidden Markov models (HMM) are evaluated as a tool for forecasting movement...
As a result in the rapid growth of explainability methods, there is a significant interest, driven b...
We investigate a recent methodology we have proposed to extract valuable information on the competit...
In this paper we investigate the labour content of complex products. By exploiting O*NET information...
In this paper we analyze if higher complexity gives lower returns in structured products. Our unique...
Evaluating the economies of countries and their relations with products in the global market is a ce...
Prior international segmentation studies have been static in that they have identified segments that...
We establish rates of convergences in time series forecasting using the statistical learning approac...