Paper Title :Journal Entries with Deep Learning Model
Author :Mario Zupan, Svjetlana Letinic, Verica Budimir
Article Citation :Mario Zupan ,Svjetlana Letinic ,Verica Budimir ,
(2018 ) " Journal Entries with Deep Learning Model " ,
International Journal of Advance Computational Engineering and Networking (IJACEN) ,
pp. 55-58,
Volume-6, Issue-10
Abstract : Deep learning is the most recent approach to achieve Artificial intelligence. Especially neural networks are used
for solving many human problems - from repetitive operations to intelligent recognizing in image, sound and text processing.
They are used in medicine, car industry, game industry and robotics. Business companies also try to find the way of
exploitation of the latest technology despite the fact that it is the long way to the point where machines will be capable to
replace the human intelligence. Authors of this paper explore possibilities of semi-supervised learning application in
accounting. One of the latest deep learning algorithm is successfully used to reconstruct the journal entry key columns. The
model was trained and tested on a real-world dataset so it could become base for developing the wide pallet of accounting
and audit applications - as anomaly detection module of Enterprise Resource Planning (ERP) software or as a standalone
application.
Index Terms - General ledger, journal entry, bookkeeping, accounting, deep learning, variational autoencoder, anomaly
detection, accounting control system.
Type : Research paper
Published : Volume-6, Issue-10
DOIONLINE NO - IJACEN-IRAJ-DOIONLINE-13840
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Copyright: © Institute of Research and Journals
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Published on 2018-12-22 |
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