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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
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)