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Simulation Scoring Tool Icon Simulation Scoring Tool

User Role Requirements

User Role*

Tool/Feature Access

Full User

Basic User

X

*Applies to Alteryx One Professional and Enterprise Edition customers on Designer versions 2025.1+.

The Simulation Scoring tool takes a sample from an approximation of a model object error distribution. Whereas standard scoring attempts to predict the mean predicted value, Simulation Scoring also considers the error distribution to provide a range of possible values.

Important

This tool is not automatically installed with Designer. To use it, download and install the Alteryx Predictive Tools for your version of Alteryx Designer. Depending on your Alteryx account type, you have two download options:

For more information, go to Download and Use Predictive Tools

Connect Inputs

Error Distribution Sampling Methodology

  • If you are scoring an LM model, the error distribution can be directly sampled due to the properties of LMs.

  • If you are scoring other models (non-LM), homoscedasticity of the error distributions with respect to the predictors is assumed. This allows a single error distribution to be calculated by scoring the model against a validation set. That error distribution is then sampled and added to the score results for the incoming data.

Warning

Don't connect this input when the incoming model object uses a Linear Regression tool.

  • S anchor: The simulation data to score. This must contain all of the fields (with identical types and names) used to create the associated predictive model.

Configure the Tool

  • Name results of score simulation: The field name for the generated results. The field name must start with a letter and can contain letters, numbers, and the special characters period (".") and underscore ("_"). Note that R is case-sensitive.

  • The number of records to score at a time: The tool can break the input data into chunks, score a chunk at a time, and thereby avoid R's in-memory processing limitation. This option controls the maximal number of incoming records contained in each chunk of data.

  • How many samples from error distribution per iteration: The number of draws from the model's error distribution for each incoming record.

  • Set Random Seed (Optional): Specify a random seed. This option is hidden if there is a seed field in the data to be scored.

View the Output

  • D anchor: The data to be scored, along with the simulated score.