- 영문명
- Machine Learning Model for Predicting Risk-off States in Financial Markets
- 발행기관
- 한국무역연구원
- 저자명
- 전병조(Byoung-Jo Chun)
- 간행물 정보
- 『무역연구』제21권 제5호, 165~183쪽, 전체 19쪽
- 주제분류
- 경제경영 > 무역학
- 파일형태
- 발행일자
- 2025.10.30
국문 초록
Purpose – This study develops a machine learning model to predict global financial market risk-off phases through the analysis of carry trade dynamics.
Design/Methodology/Approach – Because carry trade activities are difficult to observe directly, we construct three principal indicators via Principal Component Analysis (PCA): Profitability (ECP), Liquidity (ECL), and Risk (ECR). ECP measures risk-adjusted returns using interest rate differentials and exchange rate volatility. ECL captures execution feasibility and liquidity based on long- and short-term interest spreads, the dollar index, global liquidity, and central bank assets. ECR quantifies risk aversion through volatility indices such as the VIX and S&P500 realized volatility.
Findings – Using these indicators with a Random Forest algorithm, we estimate the probability of risk-off events. The model was trained on data from March 2003 to December 2019 and tested on post-2020 data. Results demonstrate strong predictive performance, with an Average Precision of 0.84 from the Precision-Recall curve. Variable importance analysis highlights ECR and ECL as dominant predictors, indicating that heightened risk aversion and reduced liquidity—often linked to carry trade unwinding—are primary channels of instability. Extending the model with external variables, including Fed rates, global supply chain pressures, and oil prices, further improved accuracy. Importantly, true positive predictions aligned with substantial equity downturns, averaging a -152.3% cumulative KOSPI decline, confirming the model’s ability to anticipate market stress.
Research Implications – In conclusion, this Random Forest-based prediction model, utilizing comprehensive carry trade-related indicators, offers early detection of financial market shifts and valuable insights for investment decisions.
영문 초록
목차
Ⅰ. 서 론
Ⅱ. 선행 연구 고찰
Ⅲ. 연구 방법
Ⅳ. 실증 연구 결과
Ⅴ. 요약 및 결론
References
해당간행물 수록 논문
참고문헌
최근 이용한 논문
교보eBook 첫 방문을 환영 합니다!
신규가입 혜택 지급이 완료 되었습니다.
바로 사용 가능한 교보e캐시 1,000원 (유효기간 7일)
지금 바로 교보eBook의 다양한 콘텐츠를 이용해 보세요!