Literature DB >> 35052117

Conducting Causal Analysis by Means of Approximating Probabilistic Truths.

Bo Pieter Johannes Andrée1,2.   

Abstract

The current paper develops a probabilistic theory of causation using measure-theoretical concepts and suggests practical routines for conducting causal inference. The theory is applicable to both linear and high-dimensional nonlinear models. An example is provided using random forest regressions and daily data on yield spreads. The application tests how uncertainty in short- and long-term inflation expectations interacts with spreads in the daily Bitcoin price. The results are contrasted with those obtained by standard linear Granger causality tests. It is shown that the suggested measure-theoretic approaches do not only lead to better predictive models, but also to more plausible parsimonious descriptions of possible causal flows. The paper concludes that researchers interested in causal analysis should be more aspirational in terms of developing predictive capabilities, even if the interest is in inference and not in prediction per se. The theory developed in the paper provides practitioners guidance for developing causal models using new machine learning methods that have, so far, remained relatively underutilized in this context.

Entities:  

Keywords:  Bitcoin; Hellinger distance; Kullback–Leibler divergence; approximation theory; causality; correct specification; inflation; misspecified models; yield spreads

Year:  2022        PMID: 35052117      PMCID: PMC8774820          DOI: 10.3390/e24010092

Source DB:  PubMed          Journal:  Entropy (Basel)        ISSN: 1099-4300            Impact factor:   2.524


  10 in total

1.  Regularization Paths for Generalized Linear Models via Coordinate Descent.

Authors:  Jerome Friedman; Trevor Hastie; Rob Tibshirani
Journal:  J Stat Softw       Date:  2010       Impact factor: 6.440

2.  Stationary and integrated autoregressive neural network processes.

Authors:  A Trapletti; F Leisch; K Hornik
Journal:  Neural Comput       Date:  2000-10       Impact factor: 2.026

3.  Predicting Fluctuations in Cryptocurrency Transactions Based on User Comments and Replies.

Authors:  Young Bin Kim; Jun Gi Kim; Wook Kim; Jae Ho Im; Tae Hyeong Kim; Shin Jin Kang; Chang Hun Kim
Journal:  PLoS One       Date:  2016-08-17       Impact factor: 3.240

4.  Randomness, Informational Entropy, and Volatility Interdependencies among the Major World Markets: The Role of the COVID-19 Pandemic.

Authors:  Salim Lahmiri; Stelios Bekiros
Journal:  Entropy (Basel)       Date:  2020-07-30       Impact factor: 2.524

5.  Using High-Frequency Entropy to Forecast Bitcoin's Daily Value at Risk.

Authors:  Daniel Traian Pele; Miruna Mazurencu-Marinescu-Pele
Journal:  Entropy (Basel)       Date:  2019-01-22       Impact factor: 2.524

6.  Forecasting Bitcoin Trends Using Algorithmic Learning Systems.

Authors:  Gil Cohen
Journal:  Entropy (Basel)       Date:  2020-07-30       Impact factor: 2.524

7.  Price Movement Prediction of Cryptocurrencies Using Sentiment Analysis and Machine Learning.

Authors:  Franco Valencia; Alfonso Gómez-Espinosa; Benjamín Valdés-Aguirre
Journal:  Entropy (Basel)       Date:  2019-06-14       Impact factor: 2.524

8.  Information Bottleneck for Estimating Treatment Effects with Systematically Missing Covariates.

Authors:  Sonali Parbhoo; Mario Wieser; Aleksander Wieczorek; Volker Roth
Journal:  Entropy (Basel)       Date:  2020-03-29       Impact factor: 2.524

9.  Heterogeneous Graphical Granger Causality by Minimum Message Length.

Authors:  Kateřina Hlaváčková-Schindler; Claudia Plant
Journal:  Entropy (Basel)       Date:  2020-12-11       Impact factor: 2.524

10.  What Drives Bitcoin? An Approach from Continuous Local Transfer Entropy and Deep Learning Classification Models.

Authors:  Andrés García-Medina; Toan Luu Duc Huynh
Journal:  Entropy (Basel)       Date:  2021-11-26       Impact factor: 2.524

  10 in total

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