Adobe Inc.
FOCUSED AGGREGATION OF CLASSIFICATION MODEL OUTPUTS TO CLASSIFY VARIABLE LENGTH DIGITAL DOCUMENTS

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Abstract:

Systems, methods, and non-transitory computer-readable media are disclosed for utilizing focused aggregation of classification model outputs to classify variable length documents. For instance, the disclosed systems can utilize a classification model to determine category scores for segments from an electronic document. Furthermore, the disclosed systems can identify positive trigger segments from the segments by comparing the category scores to a threshold category score. Moreover, the disclosed systems can determine a positive trigger ratio for the target category based on the positive trigger segments and the segments. Additionally, the disclosed systems can generate an aggregated category score for the electronic document from the positive trigger segments (when the positive trigger ratio satisfies a threshold positive trigger ratio) and distribute the electronic documents to client devices based on the aggregated category score.

Status:
Application
Type:

Utility

Filling date:

7 Jun 2019

Issue date:

10 Dec 2020