Complexity

Applications of Machine Learning Methods in Complex Economics and Financial Networks


Publishing date
01 Nov 2019
Status
Published
Submission deadline
28 Jun 2019

1Fundação Getúlio Vargas, Brasília, Brazil

2Central Bank of Brazil, Brasília, Brazil

3University of São Paulo, Ribeirão Preto, Brazil

4Bilkent University, Ankara, Turkey


Applications of Machine Learning Methods in Complex Economics and Financial Networks

Description

The availability of large databases and significant improvements in computational power has been key determinants in the explosive increase of interest in machine learning. In this sense, machine-learning methods, such as neural networks and genetic algorithms, have been used as methodological tools to understand how complex adaptive systems behave and to integrate many streams of unstructured and structured data. Economics and finance, on the flipside, have experienced an increasing interest in microlevel analysis, but with the empirical methodologies restricted to mostly linear methods brought by traditional econometric methods.

This cross-discipline special issue aims at integrating conceptual methodologies of the machine-learning domain with empirical issues that are found in Economics and Finance. There is a large room for exploration at the intersection of these two areas. Machine learning goes beyond of regression methods and can be used as a variety of ways. Thus, it can give new insights to how economics and finance data are organized. The application of these methods may contribute to the debate on assessing, monitoring and forecasting economic and financial variables is quite relevant.

We welcome new insights, models, and applications in a wide variety of topics that bridge topics in machine learning to complex economics and finance network. The application and adaptation of unsupervised learning methods, such as data and community clustering, ranking, anomaly detection, and semisupervised and supervised learning techniques, such as classification and regression, applied to finance and economics, are of great interest. We are also looking for methods that ally high-frequency data, such as those arising from social network, with traditional machine learning and econometrics to forecast or describe economic and financial variables from new perspectives. There are many gaps in the literature and we hope to address some of them within this call for papers. We look for papers that contribute to the debate on the use of machine learning in complex economics and finance network.

There are many gaps in the literature and we hope to address some of them within this call for papers. We look for papers that contribute to the debate on the use of machine learning in economics and finance.

Potential topics include but are not limited to the following:

  • Machine learning and applications in complex economics and finance network
  • Deep learning and applications in complex economics and finance network
  • Complex financial stability issues discussed using machine learning methods
  • Systemic risk measurement using new complex models
  • Network prediction using new techniques
  • Interdependent networks and its implications
  • Discussing cross-system risk, default contagion, network topology, endogenous financial networks, network resilience, Bayesian dynamic financial networks using new models and insights
  • Complexity and financial regulation
  • Multiplex networks and link prediction—applications in economics and finance
  • Interbank connections, systemic relevance, and bank supervision using new chaotic models and insights
  • Econometrics of complex networks
  • Agent-based modelling for complex economics and finance network
  • Genetic algorithms in financial network
  • Cellular automata with machine learning in financial network
  • Neural networks in financial regulation
  • Machine learning based on evolutionary game theory in finance

Articles

  • Special Issue
  • - Volume 2019
  • - Article ID 8682124
  • - Research Article

A Differential Evolution-Oriented Pruning Neural Network Model for Bankruptcy Prediction

Yajiao Tang | Junkai Ji | ... | Yuki Todo
  • Special Issue
  • - Volume 2019
  • - Article ID 9190273
  • - Research Article

Analysis of Financing Efficiency of Chinese Agricultural Listed Companies Based on Machine Learning

Lixia Liu | Xueli Zhan
  • Special Issue
  • - Volume 2019
  • - Article ID 2946158
  • - Research Article

[Retracted] Application of BP Neural Network Model in Risk Evaluation of Railway Construction

Yang Changwei | Li Zonghao | ... | Zhu Liang
  • Special Issue
  • - Volume 2019
  • - Article ID 4132485
  • - Research Article

Stock Price Pattern Prediction Based on Complex Network and Machine Learning

Hongduo Cao | Tiantian Lin | ... | Hanyu Zhang
  • Special Issue
  • - Volume 2019
  • - Article ID 5964068
  • - Research Article

Big Data Market Optimization Pricing Model Based on Data Quality

Jian Yang | Chongchong Zhao | Chunxiao Xing
  • Special Issue
  • - Volume 2019
  • - Article ID 1484372
  • - Research Article

Pricing Strategies in Dual-Channel Supply Chain with a Fair Caring Retailer

Lufeng Dai | Xifu Wang | ... | Lai Wei
  • Special Issue
  • - Volume 2019
  • - Article ID 9067367
  • - Research Article

An Improved Demand Forecasting Model Using Deep Learning Approach and Proposed Decision Integration Strategy for Supply Chain

Zeynep Hilal Kilimci | A. Okay Akyuz | ... | Mehmet Ali Ekmis
  • Special Issue
  • - Volume 2019
  • - Article ID 4324878
  • - Research Article

Is Deep Learning for Image Recognition Applicable to Stock Market Prediction?

Hyun Sik Sim | Hae In Kim | Jae Joon Ahn
Complexity
Publishing Collaboration
More info
Wiley Hindawi logo
 Journal metrics
See full report
Acceptance rate11%
Submission to final decision120 days
Acceptance to publication21 days
CiteScore4.400
Journal Citation Indicator0.720
Impact Factor2.3
 Submit Check your manuscript for errors before submitting

We have begun to integrate the 200+ Hindawi journals into Wiley’s journal portfolio. You can find out more about how this benefits our journal communities on our FAQ.