分析を次のレベルへと高め、より高度な調査を実現
IBM® SPSS® Amos は、構造方程式モデリングを簡単に実行し、標準的な多変量統計手法よりも高精度なモデルを構築できるようにします。
SPSS Amos を使用することで、直感的に使用できるインターフェースでモデルを指定、予想、評価、表示し、さまざまな変数間の仮の関係を表示できます。また、SPSS Amos は、モデルを指定する非グラフィカルの方式も提供します。SPSS Amos は、以下を含むさまざまな目的に最適なツールです。
- 心理学 - 薬物、臨床、および芸術療法が心的状態にどのような影響を及ぼすのかを把握するためのモデルを開発できます。
- 医療とヘルスケアの調査 - 信頼性、価格の安さ、研究結果の 3 つの変数のうち、医師によるジェネリック医薬品の処方のサポートを最も正確に予測できる変数を確認できます。
- 社会科学 - 社会経済の状況、組織のメンバーシップ、およびその他の決定要素が投票行動や政治参加の違いにどのような影響を及ぼすのかを調査できます。
- 教育調査 - 教育プログラムの成果を評価することで、クラスルームの効果に及ぼす影響を判別できます。
- 市場調査 - 顧客の行動が新製品の販売にどのような影響を及ぼすのかをモデル化したり、顧客満足度やブランド・ロイヤルティーを分析したりできます。
- 組織調査 - 業務関連の問題が仕事満足度にどのような影響を及ぼすのかを調査できます。
- ビジネス計画 - 計量経済学モデルと財務モデルを作成し、職場の業務遂行に影響を及ぼす要因を分析できます。
- プログラム評価 - 従来の段階的な回帰分析に置き換わる SEM を使用して、プログラムの成果や行動モデルを評価できます。
- サポートされるオペレーティング・システム: Windows
製品について
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IBM SPSS Amos makes structural equation modeling (SEM) easy and accessible
IBM SPSS Amos builds models that more realistically reflect complex relationships because any numeric variable, whether observed (such as non-experimental data from a survey) or latent (such as satisfaction and loyalty) can be used to predict any other numeric variable.
Its rich, visual framework lets you to easily compare, confirm and refine models.
Quickly build graphical models using SPSS Amos’ simple drag-and-drop drawing tools. Models that used to take days to create are just minutes away from completion. And once the model is finished, simply click your mouse and assess your model’s fit. Then make any modifications and print a presentation-quality graphic of your final model.

SPSS Amos 20 introduces a
non-graphical method to specify
models.
Click on the image to enlarge it.A non-graphical, programmatic approach, introduced with SPSS Amos 20, improves accessibility for those who can benefit by specifying models directly. Its scripting capabilities improve the productivity of users who need to run large, complicated models, and make it easy to generate many similar models that differ slightly.
Its approach to multivariate analysis encompasses and extends standard methods – including regression, factor analysis, correlation and analysis of variance.
Obtain Bayesian estimates of model parameters and other quantities
Bayesian analysis enables you to apply your subject-area expertise or business insight to improve estimates by specifying an informative prior distribution. Markov chain Monte Carlo (MCMC) is the underlying computational method for Bayesian estimation. The MCMC algorithm is fast and the MCMC tuning parameter can be adjusted automatically.
Perform estimation with ordered categorical and censored data Create a model based on non-numerical data without having to assign numerical scores to the data. Or work with censored data without having to make assumptions other than the assumption of normality. You can also impute numerical values for ordered-categorical and censored data. The resulting dataset can be used as input to programs that require complete numerical data.
Impute missing values or latent variable scores
Choose from three data imputation methods: regression, stochastic regression, or Bayesian. Use regression imputation to create a single completed dataset. Use stochastic regression imputation or Bayesian imputation to create multiple imputed datasets. You can also impute missing values or latent variable scores.
See how easy it is to use IBM SPSS Amos
1. Select a data file
Input data from a variety of file formats (IBM® SPSS® Statistics, Micosoft® Excel, text files, or many others). Select grouping variables and group values. IBM SPSS Amos also accepts data in a matrix format if you’ve computed a correlation or covariance matrix.
2. Specify your model
Use drag-and-drop drawing tools to quickly specify your path diagram model. Click on objects in the path diagram to edit values, such as variable names and parameter values. Or simply drag variable names from the variable list to the object in the path diagram to specify variables in your model.
3. Select analysis properties
Select the analysis properties you wish to examine, such as standardized estimates of parameters or squared multiple correlations. Constrain parameters for more precise models by directly specifying path coefficients.
4. View output
IBM SPSS Amos output provides standardized or un-standardized estimates of covariances and regression weights as well as a variety of model fit measures. Hotlinks in the help system link to explanations of the analysis in plain English.
5. Assess your model's fit
Make any modifications to your model and print publication-quality output.
We recommend complementing the rich functionality of IBM SPSS Amos by using it with IBM SPSS Statistics Base.
Popular downloads
| Operating system | Software | Hardware |
|---|---|---|
| Microsoft® Windows XP (Professional, 32-bit) or Vista (Home, Business, 32-bit), Windows 7 (32-bit)* *Windows 2000 is not a supported platform. |
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