RATS
Summary
RATS (Regression Analysis of Time Series) is a fast, efficient, and comprehensive econometrics and time series analysis software package.
Authors
Vendor
Estima
Links
Status
 incomplete information or not officially approved by the authors
   incomplete information or not officially approved by the authors
                Aims and scope
Mathematical Classification
Keywords
- Additional exogenous variables in mean and/or variance equations
- ARIMA and ARMAX models including multiplicative seasonal models; support for arbitrary lag structures
- BEKK models
- CATS 2.0 add-on provides industry-leading cointegration analysis
- Choice of factorizations
- Constrained optimization
- Data Entry
- Data Wizards
- Dynamic Stochastic General Equilibrium (DSGE) models
- Easy to specify lags and leads for time-series model estimation and analysis
- Error correction models
- estimating a factor matrix from a covariance matrix model
- Estimation Techniques
- Excel® files
- Exponential and Asymmetric models
- Exponential smoothing
- Extensive built-in hypothesis testing capabilities.
- Extensive hypothesis testing tools
- Forecasting
- Forecast performance statistics, including Theil U statistics
- GARCH-in-mean models
- Generalized Method of Moments
- Heteroscedasticity/serial-correlation correction, including Newey-West
- Historical decomposition
- Importance Sampling techniques
- Impulse responses
- Kalman filter
- Kernel density estimation
- Limited and discrete dependent variable models: logit, probit, censored/truncated (Tobit), count models
- Linear and quadratic programming
- Maximum likelihood estimation
- Monte Carlo Sampling
- Multiple regressions including stepwise
- Neural network models
- Non-linear least squares
- Non-linear systems estimation
- Non-parametric regressions
- Normal, t and GED distributions
- Panel data support, including fixed and random effects estimators
- Pre-written procedures for a huge variety of other tests, including unit-root, stability, and much more
- Recursive least squares
- Regression models
- Regression with autoregressive errors
- Robust estimation
- Robust standard errors
- Seemingly unrelated regressions and three-stage least squares
- Simulations with random or user-supplied shocks
- Simultaneous equation models (unlimited number of equations)
- Spectral analysis
- State-space models, including Kalman filtering and smoothing, simulations, and optimal control models
- Static or dynamic forecasts
- Statistical Methods
- Statistical Methods
- Structural VARs.
- Time series models
- Time Series Procedures
- Transfer function/intervention models
- Two-stage least squares for linear, non-linear, and autocorrelated models
- Univariate and multivariate ARCH and GARCH Models
- Unmatched support for VAR models
- Variance decomposition
- Vector Autoregressions (VARs)
- Working With Data
