The analysis of near-infrared (NIR) data arising from NIR experiments in which there exists more than one response variable of interest is discussed,with focus on the investigation of the relationship of response variables. A multivariate regression procedure based on principal component regression
Principal regression analysis and the index leverage effect
β Scribed by Pierre-Alain Reigneron; Romain Allez; Jean-Philippe Bouchaud
- Publisher
- Elsevier Science
- Year
- 2011
- Tongue
- English
- Weight
- 348 KB
- Volume
- 390
- Category
- Article
- ISSN
- 0378-4371
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β¦ Synopsis
We revisit the index leverage effect, that can be decomposed into a volatility effect and a correlation effect. We investigate the latter using a matrix regression analysis, that we call 'Principal Regression Analysis' (PRA) and for which we provide some analytical (using Random Matrix Theory) and numerical benchmarks. We find that downward index trends increase the average correlation between stocks (as measured by the most negative eigenvalue of the conditional correlation matrix), and makes the market mode more uniform. Upward trends, on the other hand, also increase the average correlation between stocks but rotates the corresponding market mode away from uniformity. There are two time scales associated to these effects, a short one on the order of a month (20 trading days), and a longer time scale on the order of a year. We also find indications of a leverage effect for sectorial correlations as well, which reveals itself in the second and third mode of the PRA.
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