This study leverages narrative from global newspapers to construct theme-based knowledge graphs about world events, demonstrating that features extracted from such graphs improve forecasts of industrial production in three large economies compared to a number of benchmarks. Our analysis relies on a filtering methodology that extracts “backbones” of statistically significant edges from large graph data sets. We find that changes in the eigenvector centrality of nodes in such backbones capture shifts in relative importance between different themes significantly better than graph similarity measures. We supplement our results with an interpretability analysis, showing that the theme categories “disease” and “economic” have the strongest predic...
Information from news articles can be used to study correlations between textual dis-course and soci...
This report explores using web based information, together with big data in macroeconomic forecastin...
Predicting the economy's short-term dynamics -- a vital input to economic agents' decision-making pr...
The current knowledge system of macroeconomics is built on interactions among a small number of vari...
Studying the content and impact of news articles has been a recurring interest in economics, finance...
We propose a novel method to improve the forecast of macroeconomic indicators based on social networ...
We define an economic network as a linked set of entities, where links are created by actual realiza...
Abstract: This paper develops indicators of unstructured press information by exploiting word vect...
Volatility in critical socio-economic indices can have a significant negative impact on global devel...
Forecasting and modelling techniques for structural analy- sis have changed through the years to co...
Knowledge representation (KR) is vital in designing symbolic notations to represent real-world facts...
An increasing amount of research focuses on the e↵ects of news and uncertainty on macroeconomic aggr...
This dissertation discusses the application of machine learning techniques on the economic causal in...
We study correlations between web-downloaded gross domestic product (GDP)'s of rich countries. GDP i...
We apply the two-step machine-learning method proposed by Claveria et al. (2021) to generate country...
Information from news articles can be used to study correlations between textual dis-course and soci...
This report explores using web based information, together with big data in macroeconomic forecastin...
Predicting the economy's short-term dynamics -- a vital input to economic agents' decision-making pr...
The current knowledge system of macroeconomics is built on interactions among a small number of vari...
Studying the content and impact of news articles has been a recurring interest in economics, finance...
We propose a novel method to improve the forecast of macroeconomic indicators based on social networ...
We define an economic network as a linked set of entities, where links are created by actual realiza...
Abstract: This paper develops indicators of unstructured press information by exploiting word vect...
Volatility in critical socio-economic indices can have a significant negative impact on global devel...
Forecasting and modelling techniques for structural analy- sis have changed through the years to co...
Knowledge representation (KR) is vital in designing symbolic notations to represent real-world facts...
An increasing amount of research focuses on the e↵ects of news and uncertainty on macroeconomic aggr...
This dissertation discusses the application of machine learning techniques on the economic causal in...
We study correlations between web-downloaded gross domestic product (GDP)'s of rich countries. GDP i...
We apply the two-step machine-learning method proposed by Claveria et al. (2021) to generate country...
Information from news articles can be used to study correlations between textual dis-course and soci...
This report explores using web based information, together with big data in macroeconomic forecastin...
Predicting the economy's short-term dynamics -- a vital input to economic agents' decision-making pr...