3/18/2023 0 Comments Ibm spss statistics![]() Summarise data and display your analyses as presentation-quality, production ready tables. ![]() ![]() Run further analysis on these subgroups and save information from trees as new variables for deeper insights.Ĭhoose from four tree-growing algorithms – CHAID, Exhaustive CHAID, C&RT and QUEST, to find the best fit for your data.Įvaluate your model by using the gains summary tables and gains chart to identify segments by highest (and lowest) contribution.ĭirectly select cases or assign predictions in your data from the model results, or export rules for later use.Ĭlassification and decision trees are commonly used for: Prune your tree and refine your model, by collapsing and expanding branches.ĭig deeper into your data as visual results can help you find specific subgroups and relationships that you might not uncover using more traditional statistics. Choose which statistics, charts and rules to include. Display tree diagrams, tree maps, bar graphs and data tables. Present groupings in a highly visual and intuitive manner, perfect for non-technical audiences. Using the comprehensive interface, you can easily build highly visual classification trees to uncover relationships, segments and patterns. Identify groups, discover relationships between them and predict future events. Use Decision Trees for better profiling and targeting. Determine ways to repair processes or make improvements to existing processes.Analyse different medications and their effectiveness.Identify product interest levels and the impact of customer satisfaction.Use generalised linear models (GENLIN) and accommodate correlated longitudinal data and clustered data with generalised estimating equations (GEE).Īdvanced Statistics techniques are commonly used to: GLM also includes capabilities for repeated measures, mixed models, post hoc tests and post hoc tests for repeated measures, four types of sums of squares, and pairwise comparisons of expected marginal means, as well as the sophisticated handling of missing cells, and the option to save design matrices and effect files. Build flexible models including linear regression, ANOVA, ANCOVA, MANOVA, and MANCOVA. Describe the relationship between a dependent variable and a set of independent variables. Model means, variances and covariances in your data using the general linear models ( GLM). Predict nonlinear outcomes, such as ordinal values or what product a customer is likely to buy, by using generalized linear mixed models ( GLMM). When there is no clear distinction between independent or dependent variables, loglinear and hierarchical loglinear analysis can be used for modelling multiway tables of count data.Įxamine the expected duration of time until one or more events happen, such as death in biological organisms and failure in mechanical systems with state-of-the-art survival procedures Kaplan-Meier and Cox regression. When your data does not conform to the assumptions required by standard analytical procedures, apply more sophisticated univariate and multivariate analytical techniques. Dive deeper into your data, analyse variances and the complex relationships of real world data to draw more dependable conclusions.
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