| Literature DB >> 33286833 |
Anqi Liu1, Jing Chen1, Steve Y Yang2, Alan G Hawkes3.
Abstract
In this study, we use entropy-based measures to identify different types of trading behaviors. We detect the return-driven trading using the conditional block entropy that dynamically reflects the "self-causality" of market return flows. Then we use the transfer entropy to identify the news-driven trading activity that is revealed by the information flows from news sentiment to market returns. We argue that when certain trading behavior becomes dominant or jointly dominant, the market will form a specific regime, namely return-, news- or mixed regime. Based on 11 years of news and market data, we find that the evolution of financial market regimes in terms of adaptive trading activities over the 2008 liquidity and euro-zone debt crises can be explicitly explained by the information flows. The proposed method can be expanded to make "causal" inferences on other types of economic phenomena.Entities:
Keywords: information entropy; market information flows; news sentiment; trading behavior identification
Year: 2020 PMID: 33286833 PMCID: PMC7597144 DOI: 10.3390/e22091064
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.524
Figure 1Information flow diagram.
Figure 2Conditional entropy vs. reduced uncertainty . Note: These results are calibrated through a simulation sample of observations.
Figure 3Small sample bias of . Note: This is an interpretation of systematically undervaluing conditional entropy due to small sample size. This calibration issue exists in transfer entropy as well. These values are calibrated through a simulation sample of and 3000 observations.
Figure 4Annotation of memory length optimization and selection
ADF test results.
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| Price level |
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| Log-return |
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| News sentiment |
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Null hypothesis: there is a unit root. Alternative hypothesis: the time series is stationary. Regression model includes a constant and no trend.
Figure 5Self information flow (memory) of market returns (2004–2014).
Figure 6Information flow from news sentiment to market return (2004–2014).
Figure 7Market regimes.
VAR model results.
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| Lag-1 return |
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| Lag-1 sentiment |
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| Lag-2 sentiment |
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| Lag-3 return |
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| Lag-3 sentiment |
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| Lag-4 return |
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| Lag-5 return |
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| Lag-5 sentiment |
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| Lag-6 sentiment |
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Granger causality test p-values.
| Lag-1 | Lag-2 | Lag-3 | Lag-4 | Lag-5 | Lag-6 | |
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| Sentiment → Return |
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| Return → Sentiment |
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Equal probability partition results.
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| Return |
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| Sentiment |
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