Enable customer payment predictions
This article explains how to configure the Customer payment predictions feature on the Finance insights configuration page. This article also includes information that can help you effectively use the feature.
Note
Before you complete the following steps, be sure to complete the prerequisite steps in the Configure for Finance insights article.
Configure the Customer payment insights feature:
Go to Credit and collections > Setup > Finance insights > Customer payment predictions.
On the Finance insights configuration page, on the Customer payment predictions tab, select View the data fields used in the prediction model to open the Data fields for prediction model page. There, you can view the default list of fields that are used to create the artificial intelligence (AI) prediction model for customer payment predictions.
To use the default list of fields to create the prediction model, close the Data fields for prediction model page, and then, on the Finance insights configuration page, set the Enable feature option to Yes.
Note
The Customer payment predictions feature requires more than 100 settled transactions in the previous six to nine months for the model to train successfully. This data must be spread across the On-time, Late, and Very late buckets with a minimum of 30 settled transactions in each bucket. The transactions can include free text invoices, sales orders, and customer payments.
Specify the "very late" transaction period to define what the Very late prediction bucket means for your business.
For each open invoice, the system predicts the probability of payment in three buckets: On time, Late, and Very late.
- On time – This bucket includes payments that are predicted to be paid on or before the transaction due date.
- Late – This bucket includes payments that are predicted to be paid after the transaction due date but before the start of the "very late" transaction period.
- Very late – This bucket includes payments that are predicted to be paid after the start of the "very late" transaction period.
Note
If you change the "very late" transaction period and select Change late threshold after the AI prediction model for customer payments has been created, the existing prediction model is deleted, and a new model is created. The new prediction model will move transactions into the "very late" period, based on the settings that were entered to define it.
After you've finished defining the "very late" transaction period, select Create prediction model to create the prediction model. The Prediction model section on the Finance insights configuration page shows the status of the prediction model.
Note
At any time while the prediction model is being created, you can select Reset model creation to restart the process.
The feature has now been configured and is ready to be used.
After the feature has been configured, and the prediction model has been created and is working, the Prediction model section of the Finance insights parameters page shows the accuracy of the model.
Feedback
https://aka.ms/ContentUserFeedback.
Coming soon: Throughout 2024 we will be phasing out GitHub Issues as the feedback mechanism for content and replacing it with a new feedback system. For more information see:Submit and view feedback for