IBM SPSS Statistics Features
What are the features of IBM SPSS Statistics?
Administration
- Quality Control
- Data Sampling
Capabilities
- Data Visualization
- Survival Analysis
- Risk Data Attributes
- Cost Analysis
Methodology
- ANOVA Support
- Regression
- Time Series Analysis
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SPSS Statistics Categories on G2
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Administration
Quality Control | As reported in 165 IBM SPSS Statistics reviews. Data quality consists of deduplication, cleansing, and appending your marketing database. | 84% (Based on 165 reviews) | |
Data Sampling | Based on 181 IBM SPSS Statistics reviews. Allows users to select samples of data for defined procedures. | 87% (Based on 181 reviews) |
Capabilities
Data Visualization | Communicate complex information clearly and effectively through advanced graphical techniques. This feature was mentioned in 199 IBM SPSS Statistics reviews. | 78% (Based on 199 reviews) | |
Survival Analysis | Supports evaluation of durations, events, and reliability in relation to statistical analysis 162 reviewers of IBM SPSS Statistics have provided feedback on this feature. | 83% (Based on 162 reviews) | |
Risk Data Attributes | Based on 145 IBM SPSS Statistics reviews. Identify risk data attributes such as description, category, owner, or hierarchy. | 82% (Based on 145 reviews) | |
Cost Analysis | As reported in 142 IBM SPSS Statistics reviews. Tools to analyze financial data in order to gain usable insights. | 81% (Based on 142 reviews) |
Methodology
ANOVA Support | Supports analysis of variance (ANOVA) to determine observed variance. This feature was mentioned in 182 IBM SPSS Statistics reviews. | 90% (Based on 182 reviews) | |
Regression | Supports various regression methods such as ordinary least squares (OLS), weighted least squares (WLS), or generalized linear model (GLM). This feature was mentioned in 195 IBM SPSS Statistics reviews. | 91% (Based on 195 reviews) | |
Time Series Analysis | As reported in 167 IBM SPSS Statistics reviews. Supports the analysis of time series data for predictive analytics and exploratory analysis. | 87% (Based on 167 reviews) |