Construction of Macroeconomic Uncertainty Indices for Financial Market Analysis Using a Supervised Topic Model †
Abstract
:1. Introduction
1.1. Measurement of the Macroeconomic Uncertainty
1.2. Our Contributions
2. Related Works
2.1. Research Related to Volatility
2.2. Research Using Text Data
2.3. Topic Model
2.4. Topic Model Applying to Uncertainty Index
3. Datasets
3.1. Text Data
3.2. Numeric Data
4. Materials and Methods
4.1. Text Data Preprocessing
4.2. Numeric Data Prepossessing
4.3. Topic Classification
4.4. Uncertainty Measurement
5. Topic Model
Supervised Latent Dirichlet Allocation
- For each document d, topic distribution determined by the following equation, where is the hyperparameter of Dirichlet distribution.
- For each topic k, word distribution determined by the following equation, where is the hyperparameter of Dirichlet distribution.
- For each word in document d
- -
- topic is sample from distribution by the following equation.
- -
- word is a sample from distribution by the following equation.
- For each document d, response variable is sample from distribution by the following equation, where .
6. Results
6.1. Topic Classification
6.2. Uncertainty Indices with Macroeconomic Event
6.3. Comparison with Baker’s Model
6.4. Correlation with Other Indices
- by applying sLDA model which uses normalized VIX index as a supervised signal, the model can extract topics highly linked to market volatility (topics 2, 5 and 7).
- extracted topics that are not closely related to the market volatility are highly correlated with the existing uncertainty index (TOPIC 1, TOPIC 3). The market impact of these topics is limited because the market is already been factored into the market.
6.5. Impulse Response Analysis
- bivariate VAR with one variable being VIX index and the other variable being Japanese Industrial Production
- bivariate VAR with one variable being Japanese uncertainty index based on Baker’s model which we build in Section 6.3 and the other variable being Japanese Industrial Production
- bivariate VAR with one variable being the topic-specific indices by our we proposed model and the other variable being Japanese Industrial Production
7. Discussion and Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Uncertainty Terms |
---|
“Uncertainty” or “Uncertain” |
“Indetermination” or “Indeterminate” |
Notation | Definition |
---|---|
Hyperparameters | |
The distribution over words | |
K | The number of topics |
The document specific topic distribution | |
Z | A topic |
w | A word in the document |
N | The number of words |
M | The number of documents |
Y | Response variable |
Hyperparameters for the response variable |
TOPIC 0 | TOPIC 1 | TOPIC 2 | TOPIC 3 | TOPIC 4 |
---|---|---|---|---|
Central bank | EU | Action | policy | risk |
Inflation | Brexit | Thomson | Trump | China |
President | UK | we | finance | World economy |
Anticipation | European Union | Norm | government | Point out |
interest rate | Trade | Principle of trust | administration | Europe |
Point out | USA | Influence | reform | growth |
growth | risk | recovery | Parliament | Emerging countries |
policy | Influence | production | Prime Minister | Influence |
Inflation | Point out | Economy | Politics | Deceleration |
Financial policy | investment | Supply | Tax increase | USA |
TOPIC 5 | TOPIC 6 | TOPIC 7 | TOPIC 8 | TOPIC 9 |
Greece | BOJ | Dollar | Company | FRB |
Europe | prices | market | GDP | Rate hike |
Bank | Relaxation | Euro | economist | FOMC |
Euro zone | add to | Rise | quarter | Chairman |
market | Committee | Decline | investment | Shrink |
support | President | Market price | Anticipation | President |
Euro | Influence | USA | export | Federal Reserve Board |
debt | policy | Stock price | Point out | Relaxation |
Finance | monetary easing | Strategist | Elongation | policy |
Point out | necessary | Investor | View | market |
A | B | C | D | E |
---|---|---|---|---|
Future View | Market | Market | Economy | Rate hike |
Yen Appreciation | Japan | Europe | Emerging countries | Financial market |
Business condition | Influences | Financial | Market | Stock Price |
Dollar | Bank of Japan | Yen Appreciation | View | Slow down |
Market | Rising | Future | Pointing out | Market |
Economy | Possibility | Business | USA | World economy |
Downside | Crude oil price | Economy | Business | Future |
Enterprise | President | World economy | Movement | China economy |
Countermeasure | FRB | Financial | Mitigation | China |
Europe | Middle East | USA | Japanese economy | Economy |
Keywords Related to the Country | Keywords Related to Other Countries | Keywords Related to Financial Market | |
---|---|---|---|
our model | 75.56% | 12.22% | 12.22% |
baker model | 14.22% | 40.85% | 44.93% |
TOPIC | Pearson Correlation Coefficient | ||||
---|---|---|---|---|---|
k | USG10 | S&P500 | USD/JPY | VIX | |
0 | 0.044 | −0.328 | −0.118 | −0.383 | −0.033 |
1 | −0.876 | −0.442 | −0.133 | −0.195 | −0.297 |
2 | 0.700 | 0.374 | 0.197 | 0.053 | 0.235 |
3 | −0.354 | −0.183 | −0.283 | 0.134 | −0.269 |
4 | 0.436 | 0.261 | 0.253 | −0.102 | 0.183 |
5 | 1.286 | 0.565 | 0.366 | 0.177 | 0.417 |
6 | −0.048 | −0.056 | 0.043 | 0.065 | −0.007 |
7 | 0.667 | 0.346 | 0.108 | 0.322 | 0.213 |
8 | −0.177 | −0.216 | −0.203 | −0.221 | −0.110 |
9 | −0.194 | −0.277 | −0.235 | 0.046 | −0.267 |
TOPIC | Pearson Correlation Coefficient | ||||
---|---|---|---|---|---|
k | Global | China | UK | US | |
0 | 0.044 | 0.251 | 0.372 | 0.096 | −0.028 |
1 | −0.876 | 0.687 | 0.752 | 0.648 | 0.260 |
2 | 0.700 | −0.226 | −0.266 | −0.312 | −0.005 |
3 | −0.354 | 0.098 | 0.029 | 0.325 | 0.131 |
4 | 0.436 | −0.117 | −0.127 | −0.263 | 0.040 |
5 | 1.286 | −0.285 | −0.381 | −0.300 | −0.058 |
6 | −0.048 | −0.086 | −0.078 | −0.105 | −0.084 |
7 | 0.667 | −0.481 | −0.537 | −0.315 | −0.182 |
8 | −0.177 | 0.032 | 0.120 | −0.038 | −0.117 |
9 | −0.194 | −0.007 | 0.014 | 0.038 | −0.034 |
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Yono, K.; Sakaji, H.; Matsushima, H.; Shimada, T.; Izumi, K. Construction of Macroeconomic Uncertainty Indices for Financial Market Analysis Using a Supervised Topic Model. J. Risk Financial Manag. 2020, 13, 79. https://doi.org/10.3390/jrfm13040079
Yono K, Sakaji H, Matsushima H, Shimada T, Izumi K. Construction of Macroeconomic Uncertainty Indices for Financial Market Analysis Using a Supervised Topic Model. Journal of Risk and Financial Management. 2020; 13(4):79. https://doi.org/10.3390/jrfm13040079
Chicago/Turabian StyleYono, Kyoto, Hiroki Sakaji, Hiroyasu Matsushima, Takashi Shimada, and Kiyoshi Izumi. 2020. "Construction of Macroeconomic Uncertainty Indices for Financial Market Analysis Using a Supervised Topic Model" Journal of Risk and Financial Management 13, no. 4: 79. https://doi.org/10.3390/jrfm13040079
APA StyleYono, K., Sakaji, H., Matsushima, H., Shimada, T., & Izumi, K. (2020). Construction of Macroeconomic Uncertainty Indices for Financial Market Analysis Using a Supervised Topic Model. Journal of Risk and Financial Management, 13(4), 79. https://doi.org/10.3390/jrfm13040079