AI Model Building - Filter Junk Emails

This article provides a workflow for culling junk emails from review using AI Models


Introduction

“Junk” emails are typically emails sent from marketing companies, as such it contains no value for reviewers and ideally should be excluded from batching out to reviewers at the early stage of review.

Reveal AI provides various options to detect and exclude “Junk” emails after data has been ingested into AI.

Process Flow

218 - 01 - Email Cull Model Process Flow

Workflow Steps

  1. Process Data
    Data first needs to be ingested into the Reveal platform. Check front-end to confirm data has been successfully ingested and document counts match expectations.
    218 - 02 - Doc Count to verify
  2. Add Models
    Before running models, follow the steps below to create an AI-enabled tag for each of the following models:
    1. Advertisements and Promotions
    2. Out of Office
    3. Personal & Family Events
    4. Sports News
      1. Log in to Reveal.
      2. Click on the Project Admin button in the Navigation Bar.
      3. Click on the Tags menu option.
      4. With the Tags tab selected in the left pane, click Add Tag and Choices.
        1. Create a Multi-Select
        2. Add new choice to create 4 choices matching the models above.
        3. Make sure Prediction Enabled is selected for all choices.218 - 03 - Create Multi-Select Classifier TagClick Add and this will create 4 classifiers on the Supervised Learning page. Refer to Reveal’s Knowledgebase on how to add an AI-enabled tag: Build & Configure a Classifier.
  3. Run Models
    Follow the steps below to add AI Models to the corresponding classifier. Repeat this for all 4 classifiers created in the step above.
    1. Open the classifier’s Edit Classifier page.
    2. Under AI Library Models section, search for the corresponding AI Model and add it. Notice the latest model comes with “V1.5” as part of the model name. For example, to add the model for Advertisements and Promotions, select Advertisements & Promotions V1.5.
      218 - 04 - Added Advertising Promotion Model
    3. Click Run Full Process button that appears below upon selection to apply the selected model to the classifier.
  4. Run Search
    Follow the steps below to create saved searches based on the classifier results above.
    1. Confirm all four classifiers have finished running and the Status is Ready:
      218 - 05 - Check New Classifier Status
    2. Create a saved search to find all documents scored above certain threshold, for example, 85 or higher. Note that this might need to be adjusted based on actual data:
      218 - 06 - Classifier Score Search
    3. From the search results above, QC a few docs to confirm the quality of the results. Adjust threshold if necessary.

     

    Last Updated 3/25/2024