CloudScan - A configuration-free invoice analysis system using recurrent neural networks

August 24, 2017 ยท Declared Dead ยท ๐Ÿ› IEEE International Conference on Document Analysis and Recognition

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Authors Rasmus Berg Palm, Ole Winther, Florian Laws arXiv ID 1708.07403 Category cs.CL: Computation & Language Citations 90 Venue IEEE International Conference on Document Analysis and Recognition Last Checked 4 months ago
Abstract
We present CloudScan; an invoice analysis system that requires zero configuration or upfront annotation. In contrast to previous work, CloudScan does not rely on templates of invoice layout, instead it learns a single global model of invoices that naturally generalizes to unseen invoice layouts. The model is trained using data automatically extracted from end-user provided feedback. This automatic training data extraction removes the requirement for users to annotate the data precisely. We describe a recurrent neural network model that can capture long range context and compare it to a baseline logistic regression model corresponding to the current CloudScan production system. We train and evaluate the system on 8 important fields using a dataset of 326,471 invoices. The recurrent neural network and baseline model achieve 0.891 and 0.887 average F1 scores respectively on seen invoice layouts. For the harder task of unseen invoice layouts, the recurrent neural network model outperforms the baseline with 0.840 average F1 compared to 0.788.
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