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EViews 9 Feature List
EViews
9 offers a extensive array of powerful features for data handling,
statistics and econometric analysis, forecasting and simulation, data
presentation, and programming. While we can't possibly list everything,
the following list offers a glimpse at the important EViews features:
BASIC DATA HANDLING
- Numeric, alphanumeric (string), and date series; value labels.
- Extensive library of operators and statistical, mathematical, date and string functions.
- Powerful language for expression handling and transforming existing data using operators and functions.
- Samples and sample objects facilitate processing on subsets of data.
- Support for complex data structures including regular
dated data, irregular dated data, cross-section data with observation
identifiers, dated, and undated panel data.
- Multi-page workfiles.
- EViews native, disk-based databases provide powerful query features and integration with EViews workfiles.
- Convert data between EViews and various spreadsheet,
statistical, and database formats, including (but not limited to):
Microsoft Access® and Excel® files (including .XSLX and .XLSM), Gauss
- Dataset files, SAS® Transport files, SPSS native and portable files, Stata
- files, raw formatted ASCII text or binary files, HTML, or ODBC databases
- and queries (ODBC support is provided only in the Enterprise Edition).
- OLE support for linking EViews output, including
tables and graphs, to other packages, including Microsoft Excel®, Word®
and Powerpoint®.
- OLEDB support for reading EViews workfiles and databases using OLEDB-aware clients or custom programs.
- Support for FRED® (Federal Reserve Economic Data)
databases. Enterprise Edition support for Global Insight DRIPro and
DRIBase, Haver Analytics® DLX®, FAME, EcoWin, Bloomberg, EIA, CEIC,
Datastream, FactSet, and Moody’s Economy.com databases.
- The EViews Microsoft Excel® Add-in allows you to link or import data from EViews workfiles and databases from within Excel.
- Drag-and-drop support for reading data; simply drop
files into EViews for automatic conversion and linking of foreign data
into EViews workfile format.
- Powerful tools for creating new workfile pages from values and dates in existing series.
- Match merge, join, append, subset, resize, sort, and reshape (stack and unstack) workfiles.
- Easy-to-use automatic frequency conversion when copying or linking data between pages of different frequency.
- Frequency conversion and match merging support dynamic updating whenever underlying data change.
- Auto-updating formula series that are automatically recalculated whenever underlying data change.
- Easy-to-use frequency conversion: simply copy or link data between pages of different frequency.
- Tools for resampling and random number generation for
simulation. Random number generation for 18 different distribution
functions using three different random number generators.
- Support for cloud drive access, allowing you to open and save file directly to Dropbox, OneDrive, Google Drive and Box accounts.
TIME SERIES DATA HANDLING
- Integrated support for handling dates and time series data (both regular and irregular).
- Support for common regular frequency data (Annual,
Semi-annual, Quarterly, Monthly, Bimonthly, Fortnight, Ten-day, Weekly,
Daily - 5 day week, Daily - 7 day week).
- Support for high-frequency (intraday) data, allowing
for hours, minutes, and seconds frequencies. In addition, there are a
number of less commonly encountered regular frequencies, including
Multi-year, Bimonthly, Fortnight, Ten-Day, and Daily with an arbitrary
range of days of the week.
- Specialized time series functions and operators: lags, differences, log-differences, moving averages, etc.
- Frequency conversion: various high-to-low and low-to-high methods.
- Exponential smoothing: single, double, Holt-Winters, and ETS smoothing.
- Built-in tools for whitening regression.
- Hodrick-Prescott filtering.
- Band-pass (frequency) filtering: Baxter-King, Christiano-Fitzgerald fixed length and full sample asymmetric filters.
- Seasonal adjustment: Census X-13, X-12-ARIMA, Tramo/Seats, moving average.
- Interpolation to fill in missing values within a series: Linear, Log-Linear, Catmull-Rom Spline, Cardinal Spline.
STATISTICS
Basic
- Basic data summaries; by-group summaries.
- Tests of equality: t-tests, ANOVA (balanced and
unbalanced, with or without heteroskedastic variances.), Wilcoxon,
Mann-Whitney, Median Chi-square, Kruskal-Wallis, van der Waerden,
F-test, Siegel-Tukey, Bartlett, Levene, Brown-Forsythe.
- One-way tabulation; cross-tabulation with measures of
association (Phi Coefficient, Cramer’s V, Contingency Coefficient) and
independence testing (Pearson Chi-Square, Likelihood Ratio G^2).
- Covariance and correlation analysis including Pearson, Spearman rank-order, Kendall’s tau-a and tau-b and partial analysis.
- Principal components analysis including scree plots, biplots and loading plots, and weighted component score calculations.
- Factor analysis allowing computation of measures of
association (including covariance and correlation), uniqueness
estimates, factor loading estimates and factor scores, as well as
performing estimation diagnostics and factor rotation using one of over
30 different orthogonal and oblique methods.
- Empirical Distribution Function (EDF) Tests for the
Normal, Exponential, Extreme value, Logistic, Chi-square, Weibull, or
Gamma distributions (Kolmogorov-Smirnov, Lilliefors, Cramer-von Mises,
Anderson-Darling, Watson).
- Histograms, Frequency Polygons, Edge Frequency
Polygons, Average Shifted Histograms, CDF-survivor-quantile,
Quantile-Quantile, kernel density, fitted theoretical distributions,
boxplots.
- Scatterplots with parametric and non-parametric
regression lines (LOWESS, local polynomial), kernel regression
(Nadaraya-Watson, local linear, local polynomial)., or confidence
ellipses.
Time Series
- Autocorrelation, partial autocorrelation, cross-correlation, Q-statistics.
- Granger causality tests, including panel Granger causality.
- Unit root tests: Augmented Dickey-Fuller, GLS
transformed Dickey-Fuller, Phillips-Perron, KPSS,
Eliot-Richardson-Stock Point Optimal, Ng-Perron, as well as tests for
unit roots with breakpoints.
- Cointegration tests: Johansen, Engle-Granger, Phillips-Ouliaris, Park added variables, and Hansen stability.
- Independence tests: Brock, Dechert, Scheinkman and LeBaron
- Variance ratio tests: Lo and MacKinlay, Kim wild
bootstrap, Wright's rank, rank-score and sign-tests. Wald and multiple
comparison variance ratio tests (Richardson and Smith, Chow and
Denning).
- Long-run variance and covariance calculation:
symmetric or or one-sided long-run covariances using nonparametric
kernel (Newey-West 1987, Andrews 1991), parametric VARHAC (Den Haan and
Levin 1997), and prewhitened kernel (Andrews and Monahan 1992) methods.
In addition, EViews supports Andrews (1991) and Newey-West (1994)
automatic bandwidth selection methods for kernel estimators, and
information criteria based lag length selection methods for VARHAC and
prewhitening estimation.
Panel and Pool
- By-group and by-period statistics and testing.
- Unit root tests: Levin-Lin-Chu, Breitung, Im-Pesaran-Shin, Fisher, Hadri.
- Cointegration tests: Pedroni, Kao, Maddala and Wu.
- Panel within series covariances and principal components.
- Dumitrescu-Hurlin (2012) panel causality tests.
- Cross-section dependence tests.
ESTIMATION
Regression
- Linear and nonlinear ordinary least squares (multiple regression).
- Linear regression with PDLs on any number of independent variables.
- Robust regression.
- Analytic derivatives for nonlinear estimation.
- Weighted least squares.
- White and Newey-West robust standard errors. HAC
standard errors may be computed using nonparametric kernel, parametric
VARHAC, and prewhitened kernel methods, and allow for Andrews and
Newey-West automatic bandwidth selection methods for kernel estimators,
and information criteria based lag length selection methods for VARHAC
and prewhitening estimation.
- Linear quantile regression and least absolute
deviations (LAD), including both Huber’s Sandwich and bootstrapping
covariance calculations.
- Stepwise regression with seven different selection procedures.
- Threshold regression including TAR and SETAR.
ARMA and ARMAX
- Linear models with autoregressive moving average, seasonal autoregressive, and seasonal moving average errors.
- Nonlinear models with AR and SAR specifications.
- Estimation using the backcasting method of Box and Jenkins, conditional least squares, ML or GLS.
- Fractionally integrated ARFIMA models.
Instrumental Variables and GMM
- Linear and nonlinear two-stage least
squares/instrumental variables (2SLS/IV) and Generalized Method of
Moments (GMM) estimation.
- Linear and nonlinear 2SLS/IV estimation with AR and SAR errors.
- Limited Information Maximum Likelihood (LIML) and K-class estimation.
- Wide range of GMM weighting matrix specifications (White, HAC, User-provided) with control over weight matrix iteration.
- GMM estimation options include continuously updating
estimation (CUE), and a host of new standard error options, including
Windmeijer standard errors.
- IV/GMM specific diagnostics include Instrument
Orthogonality Test, a Regressor Endogeneity Test, a Weak Instrument
Test, and a GMM specific breakpoint test.
ARCH/GARCH
- GARCH(p,q), EGARCH, TARCH, Component GARCH, Power ARCH, Integrated GARCH.
- The linear or nonlinear mean equation may include
ARCH and ARMA terms; both the mean and variance equations allow for
exogenous variables.
- Normal, Student’s t, and Generalized Error Distributions.
- Bollerslev-Wooldridge robust standard errors.
- In- and out-of sample forecasts of the conditional variance and mean, and permanent components.
Limited Dependent Variable Models
- Binary Logit, Probit, and Gompit (Extreme Value).
- Ordered Logit, Probit, and Gompit (Extreme Value).
- Censored and truncated models with normal, logistic, and extreme value errors (Tobit, etc.).
- Count models with Poisson, negative binomial, and quasi-maximum likelihood (QML) specifications.
- Heckman Selection models.
- Huber/White robust standard errors.
- Count models support generalized linear model or QML standard errors.
- Hosmer-Lemeshow and Andrews Goodness-of-Fit testing for binary models.
- Easily save results (including generalized residuals and gradients) to new EViews objects for further analysis.
- General GLM estimation engine may be used to estimate several of these models, with the option to include robust covariances.
Panel Data/Pooled Time Series, Cross-Sectional Data
- Linear and nonlinear estimation with additive cross-section and period fixed or random effects.
- Choice of quadratic unbiased estimators (QUEs) for
component variances in random effects models: Swamy-Arora,
Wallace-Hussain, Wansbeek-Kapteyn.
- 2SLS/IV estimation with cross-section and period fixed or random effects.
- Estimation with AR errors using nonlinear least squares on a transformed specification
- Generalized least squares, generalized 2SLS/IV
estimation, GMM estimation allowing for cross-section or period
heteroskedastic and correlated specifications.
- Linear dynamic panel data estimation using first
differences or orthogonal deviations with period-specific predetermined
instruments (Arellano-Bond).
- Panel serial correlation tests (Arellano-Bond).
- Robust standard error calculations include seven types of robust White and Panel-corrected standard errors (PCSE).
- Testing of coefficient restrictions, omitted and redundant variables, Hausman test for correlated random effects.
- Panel unit root tests: Levin-Lin-Chu, Breitung,
Im-Pesaran-Shin, Fisher-type tests using ADF and PP tests (Maddala-Wu,
Choi), Hadri.
- Panel cointegration estimation: Fully Modified OLS
(FMOLS, Pedroni 2000) or Dynamic Ordinary Least Squares (DOLS, Kao and
Chaing 2000, Mark and Sul 2003).
- Pooled Mean Group (PMG) estimation.
Generalized Linear Models
- Normal, Poisson, Binomial, Negative Binomial, Gamma, Inverse Gaussian, Exponential Mena, Power Mean, Binomial Squared families.
- Identity, log, log-complement, logit, probit,
log-log, complimentary log-log, inverse, power, power odds ratio,
Box-Cox, Box-Cox odds ratio link functions.
- Prior variance and frequency weighting.
- Fixed, Pearson Chi-Sq, deviance, and user-specified dispersion specifications. Support for QML estimation and testing.
- Quadratic Hill Climbing, Newton-Raphson, IRLS - Fisher Scoring, and BHHH estimation algorithms.
- Ordinary coefficient covariances computed using
expected or observed Hessian or the outer product of the gradients.
Robust covariance estimates using GLM, HAC, or Huber/White methods.
Single Equation Cointegrating Regression
- Support for three fully efficient estimation methods,
Fully Modified OLS (Phillips and Hansen 1992), Canonical Cointegrating
Regression (Park 1992), and Dynamic OLS (Saikkonen 1992, Stock and
Watson 1993
- Engle and Granger (1987) and Phillips and Ouliaris
(1990) residual-based tests, Hansen's (1992b) instability test, and
Park's (1992) added variables test.
- Flexible specification of the trend and deterministic regressors in the equation and cointegrating regressors specification.
- Fully featured estimation of long-run variances for FMOLS and CCR.
- Automatic or fixed lag selection for DOLS lags and leads and for long-run variance whitening regression.
- Rescaled OLS and robust standard error calculations for DOLS.
User-specified Maximum Likelihood
- Use standard EViews series expressions to describe the log likelihood contributions.
- Examples for multinomial and conditional logit,
Box-Cox transformation models, disequilibrium switching models, probit
models with heteroskedastic errors, nested logit, Heckman sample
selection, and Weibull hazard models.
SYSTEMS OF EQUATIONS
Basic
- Linear and nonlinear estimation.
- Least squares, 2SLS, equation weighted estimation, Seemingly Unrelated Regression, and Three-Stage Least Squares.
- GMM with White and HAC weighting matrices.
- AR estimation using nonlinear least squares on a transformed specification.
- Full Information Maximum Likelihood (FIML).
VAR/VEC
- Estimate structural factorizations in VARs by imposing short- or long-run restrictions.
- Bayesian VARs.
- Impulse response functions in various tabular and
graphical formats with standard errors calculated analytically or by
Monte Carlo methods.
- Impulse response shocks computed from Cholesky
factorization, one-unit or one-standard deviation residuals (ignoring
correlations), generalized impulses, structural factorization, or a
user-specified vector/matrix form.
- Impose and test linear restrictions on the cointegrating relations and/or adjustment coefficients in VEC models.
- View or generate cointegrating relations from estimated VEC models.
- Extensive diagnostics including: Granger causality
tests, joint lag exclusion tests, lag length criteria evaluation,
correlograms, autocorrelation, normality and heteroskedasticity
testing, cointegration testing, other multivariate diagnostics.
Multivariate ARCH
- Conditional Constant Correlation (p,q), Diagonal VECH (p,q), Diagonal BEKK (p,q), with asymmetric terms.
- Extensive parameterization choice for the Diagonal VECH's coefficient matrix.
- Exogenous variables allowed in the mean and variance equations; nonlinear and AR terms allowed in the mean equations.
- Bollerslev-Wooldridge robust standard errors.
- Normal or Student's t multivariate error distribution
- A choice of analytic or (fast or slow) numeric derivatives. (Analytics derivatives not available for some complex models.)
- Generate covariance, variance, or correlation in various tabular and graphical formats from estimated ARCH models.
State Space
- Kalman filter algorithm for estimating user-specified single- and multiequation structural models.
- Exogenous variables in the state equation and fully parameterized variance specifications.
- Generate one-step ahead, filtered, or smoothed signals, states, and errors.
- Examples include time-varying parameter, multivariate ARMA, and quasilikelihood stochastic volatility models.
TESTING AND EVALUATION
- Actual, fitted, residual plots.
- Wald tests for linear and nonlinear coefficient
restrictions; confidence ellipses showing the joint confidence region
of any two functions of estimated parameters.
- Other coefficient diagnostics: standardized
coefficients and coefficient elasticities, confidence intervals,
variance inflation factors, coefficient variance decompositions.
- Omitted and redundant variables LR tests, residual
and squared residual correlograms and Q-statistics, residual serial
correlation and ARCH LM tests.
- White, Breusch-Pagan, Godfrey, Harvey and Glejser heteroskedasticity tests.
- Stability diagnostics: Chow breakpoint and forecast
tests, Quandt-Andrews unknown breakpoint test, Bai-Perron breakpoint
tests, Ramsey RESET tests, OLS recursive estimation, influence
statistics, leverage plots.
- ARMA equation diagnostics: graphs or tables of the
inverse roots of the AR and/or MA characteristic polynomial, compare
the theoretical (estimated) autocorrelation pattern with the actual
correlation pattern for the structural residuals, display the ARMA
impulse response to an innovation shock and the ARMA frequency spectrum.
- Easily save results (coefficients, coefficient
covariance matrices, residuals, gradients, etc.) to EViews objects for
further analysis.
- See also Estimation and Systems of Equations for additional specialized testing procedures.
FORECASTING AND SIMULATION
- In- or out-of-sample static or dynamic forecasting
from estimated equation objects with calculation of the standard error
of the forecast.
- Forecast graphs and in-sample forecast evaluation: RMSE, MAE, MAPE, Theil Inequality Coefficient and proportions
- State-of-the-art model building tools for multiple equation forecasting and multivariate simulation.
- Model equations may be entered in text or as links for automatic updating on re-estimation.
- Display dependency structure or endogenous and exogenous variables of your equations.
- Gauss-Seidel, Broyden and Newton model solvers for
non-stochastic and stochastic simulation. Non-stochastic forward
solution solve for model consistent expectations. Stochasitc simulation
can use bootstrapped residuals.
- Solve control problems so that endogenous variable achieves a user-specified target.
- Sophisticated equation normalization, add factor and override support.
- Manage and compare multiple solution scenarios involving various sets of assumptions.
- Built-in model views and procedures display simulation results in graphical or tabular form.
GRAPHS AND TABLES
- Line, dot plot, area, bar, spike, seasonal, pie, xy-line, scatterplots, boxplots, error bar, high-low-open-close, and area band.
- Powerful, easy-to-use categorical and summary graphs.
- Auto-updating graphs which update as underlying data change.
- Observation info and value display when you hover the cursor over a point in the graph.
- Histograms, average shifted historgrams, frequency
polyons, edge frequency polygons, boxplots, kernel density, fitted
theoretical distributions, boxplots, CDF, survivor, quantile,
quantile-quantile.
- Scatterplots with any combination parametric and
nonparametric kernel (Nadaraya-Watson, local linear, local polynomial)
and nearest neighbor (LOWESS) regression lines, or confidence ellipses.
- Interactive point-and-click or command-based customization.
- Extensive customization of graph background, frame,
legends, axes, scaling, lines, symbols, text, shading, fading, with
improved graph template features.
- Table customization with control over cell font face,
size, and color, cell background color and borders, merging, and
annotation.
- Copy-and-paste graphs into other Windows
applications, or save graphs as Windows regular or enhanced metafiles,
encapsulated PostScript files, bitmaps, GIFs, PNGs or JPGs.
- Copy-and-paste tables to another application or save to an RTF, HTML, or text file.
- Manage graphs and tables together in a spool object that lets you display multiple results and analyses in one object
COMMANDS AND PROGRAMMING
- Object-oriented command language provides access to menu items.
- Batch execution of commands in program files.
- Looping and condition branching, subroutine, and macro processing.
- String and string vector objects for string processing. Extensive library of string and string list functions.
- Extensive matrix support: matrix manipulation,
multiplication, inversion, Kronecker products, eigenvalue solution, and
singular value decomposition.
EXTERNAL INTERFACE AND ADD-INS
- EViews COM automation server support so that external
programs or scripts can launch or control EViews, transfer data, and
execute EViews commands.
- EViews offers COM Automation client support
application for MATLAB® and R servers so that EViews may be used to
launch or control the application, transfer data, or execute commands.
- The EViews Microsoft Excel® Add-in offers a simple
interface for fetching and linking from within Microsoft Excel® (2000
and later) to series and matrix objects stored in EViews workfiles and
databases.
- The EViews Add-ins infrastructure offers seamless
access to user-defined programs using the standard EViews command,
menu, and object interface.
- Download and install predefined Add-ins from the EViews website.
©
Copyright 2015 IHS Global Inc.
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