| Literature DB >> 32923716 |
Pedro Antonio Martín Cervantes1, Salvador Cruz Rambaud1.
Abstract
In this paper, we have tested the existence of a causal relationship between the arrival of the 45th presidency of United States and the performance of American stock markets by using a relatively novel methodology, namely the causal-impact Bayesian approach. In effect, we have found strong causal relationships which, in addition to satisfying the classical Granger Causality linear test, have been quantified in absolute and relative terms. Our findings should be included in the context of one of the main markets anomalies, the so-called "calendar effects". More specifically, when distinguishing between the subperiods of pre- and post-intervention, data confirm that the "US presidential cycle" represents a process of high uncertainty and volatility in which the behavior of the prices of financial assets refutes the Efficient-Market Hypothesis.Entities:
Keywords: Behavioral economics; Business; Calendar effect; Causal-impact Bayesian analysis; Causality; Econometrics; Economics; Efficient market hypothesis; Finance; Market anomalies
Year: 2020 PMID: 32923716 PMCID: PMC7475121 DOI: 10.1016/j.heliyon.2020.e04760
Source DB: PubMed Journal: Heliyon ISSN: 2405-8440
Figure 1Causal-impact scheme.
Figure 2DJIA vs. BCI. Monthly log-increment rates, sample: 1991M01-2019M11.
Summary of statistics and difference of means contrast.
| I. Summary of statistics | |||||
|---|---|---|---|---|---|
| Statistics (A) | DJIA | BCI | Statistics (B) | DJIA | BCI |
| Observations | 347 | 347 | SE Mean | 0.0021 | 0.00012 |
| Minimum | −0.1640 | −0.0092 | Variance | 0.00162 | 0.000005 |
| Maximum | 0.1007 | 0.0068 | Standard deviation | 0.0403 | 0.0023 |
| Range | 0.2648 | 0.0160 | Coefficient of variation | 5.9148 | 49.5585 |
| Sum | 2.3656 | 0.0161 | JB | <0.01 | <0.01 |
| Median | 0.0098 | −0.00007 | Skewness | −0.760081 | 0.028845 |
| Mean | 0.00681 | 0.00004 | Kurtosis | 4.698722 | 4.261965 |
Figure 3DJIA and BCI boxplots. Pre-intervention and post-intervention periods.
Pairwise causality test according to Granger (Granger, 1969). Monthly variables DJIA and BCI (in log-terms, sample: 1991M01-2019M11).
| Null hypothesis ( | Obs. | Prob. | |
|---|---|---|---|
| BCI does not cause DJIA | 345 | 6.57954 | 0.0016 |
| DJIA does not cause BCI | 1.88663 | 0.1532 | |
Summary of the causal impact analysis of “Trump Effect”.
| Average approach | Cumulative approach | |
|---|---|---|
| Actual | 24,381 | 853,338 |
| Prediction (S.D.) | 18,680 (968) | 653,795 (33,878) |
| 95% CI | [16,808-20,668] | [588,271-723,382] |
| Absolute effect (S.D.) | 5,701 (968) | 199,543 (33,878) |
| 95% CI | [3,713-7,573] | [129,956-265,067] |
| Relative effect (S.D.) | 31% (5.2%) | 31% (5.2%) |
| 95% CI | [20%-41%] | [20%, 41%] |
| S.D. = Prior standard deviation of the Gaussian random walk of the local level. | ||
| Posterior tail-area probability | ||
| Posterior probability of a causal effect: 99.89529% | ||
Figure 4“Trump Effect”: causal impact of BCI on DJIA (I).
Figure 5“Trump Effect”: causal impact of BCI on DJIA (II).