ldhmm: Hidden Markov Model for Financial Time-Series Based on Lambda
Distribution
Hidden Markov Model (HMM) based on symmetric lambda distribution
    framework is implemented for the study of return time-series in the financial
    market. Major features in the S&P500 index, such as regime identification,
    volatility clustering, and anti-correlation between return and volatility,
    can be extracted from HMM cleanly. Univariate symmetric lambda distribution
    is essentially a location-scale family of exponential power distribution.
    Such distribution is suitable for describing highly leptokurtic time series
    obtained from the financial market. It provides a theoretically solid foundation
    to explore such data where the normal distribution is not adequate. The HMM
    implementation follows closely the book: "Hidden Markov Models for Time Series",
    by Zucchini, MacDonald, Langrock (2016).
| Version: | 
0.5.1 | 
| Depends: | 
R (≥ 3.5.0) | 
| Imports: | 
stats, utils, ecd, optimx, xts (≥ 0.10-0), zoo, moments, parallel, graphics, scales, ggplot2, grid, methods | 
| Suggests: | 
knitr, testthat, depmixS4, roxygen2, R.rsp, shape | 
| Published: | 
2019-12-05 | 
| Author: | 
Stephen H-T. Lihn [aut, cre] | 
| Maintainer: | 
Stephen H-T. Lihn  <stevelihn at gmail.com> | 
| License: | 
Artistic-2.0 | 
| URL: | 
https://ssrn.com/abstract=2979516
https://ssrn.com/abstract=3435667 | 
| NeedsCompilation: | 
no | 
| Materials: | 
NEWS  | 
| CRAN checks: | 
ldhmm results | 
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