Record categorization
Summarize
Summary of Record Categorization
The record categorization feature in Task Intelligence for Customer Service leverages machine learning to analyze text, predict field values, and auto-populate fields on case and interaction records. It supports multiple languages and can analyze attachments, improving the categorization process across various communication channels, such as email, web, and chat.
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Key Features
- Predicted Field Values: Fields with predicted values are marked with an AI icon and can provide top three recommended values in a dropdown for agents to select from.
- Filter Inactive Values: You can enable a setting to filter out inactive field values from predictions to streamline the options presented to agents.
- AI Prediction Banner: A banner indicates when a case record has categorization predictions, helping agents recognize auto-fill fields at a glance.
- Multi-lingual Support: The system can evaluate and predict field values in multiple languages including English, French, German, and Spanish, with additional languages available on demand.
- Attachment-based Categorization: The feature can utilize information from email and record attachments to enhance prediction accuracy and case routing.
Key Outcomes
By implementing record categorization, ServiceNow customers can expect improved efficiency in case handling as automated routing minimizes manual processing. This allows agents to focus on higher priority tasks and enhances overall service delivery. Additionally, the ability to categorize records accurately across multiple languages and through attachments ensures a comprehensive approach to customer service management.
The record categorization feature included with Task Intelligence for Customer Service uses machine learning models to evaluate text, predict field values, and automatically populate fields on case and interaction records.
Record categorization supports multiple languages and can scan attachments in addition to evaluating text from emails and records. Use this feature to categorize cases, case types, and interactions from multiple channels including email, web, and chat.
You can use the results of the categorization to automatically route records to the right service desk, which avoid the need for multiple email inboxes and RPA bots. Auto- routing also frees up your employees to work on other tasks.
Predicted field values
In CSM Configurable Workspace and Core UI, the fields on the record that contain predicted values are identified with the Predicted or Recommended messages.
Recommended field values
- Choice lists
- Single lookup
- Multi lookup
- Single and multi text fields
If the top three recommendations aren’t available, the system displays a message in the Top Recommendations section of the dropdown list that no predictions are available. The other values follow this message.
Filtering inactive field values from predictions
Enable the sn_csm_ml_task.case.categorization.enable_inactive_filter to remove inactive field values from predictions. The default setting for this property is false.
AI prediction banner
The banner can be enabled or disabled by the sn_csm_ml_task.ui.banner.enabled system property.
Prediction feedback
- Autofill: A value is considered to be predicted correctly (set to true) if the predicted value and the final value are the same.
- Recommendation: A value is considered to be predicted correctly if any one of the predicted values matches the final value.
The Predictor Result table also stores information about skipped and failed predictions. For more information about this table, see Components installed with Task Intelligence for Customer Service.
Multi-lingual record categorization
- English
- French
- German
- Spanish
- Understand the text in emails and records.
- Evaluate the text and predict field values.
- Add the predicted values to fields on cases, case types, and interactions.
- Arabic
- Chinese (PRC)
- Chinese (Taiwan)
- Dutch
- Italian
- Japanese
- Korean
- Polish
- Portuguese
- Russian
- Thai
- Turkish
Attachment-based record categorization
Attachments can include valuable signals that help support desks to categorize and route records automatically. To take advantage of attachment information, you can use a machine learning model to parse email and record text and attachments and automatically populate fields on cases, case types, and interactions based on signals contained in the text.
- Text in the subject line and body of a customer email.
- Text in the short description and description of a case or interaction.
- Text in email and record attachments.
Attachment-based categorization uses all of this information to predict field values. As a result, you can automatically route records to the appropriate service desk based on these values.