Recognising the contents in digitised financial documents
Articles
Simas Rimašauskas
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Igoris Belovas
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Published 2025-05-12
https://doi.org/10.15388/LMITT.2025.22
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Keywords

machine learning
natural language processing
optical character recognition
text recognition
table recognition

Abstract

The necessity of content recognition in digital documents is everincreasing in the financial sector. Extracted data is used for fundamental analysis, modelling and portfolio selection. In the most prominent markets, there is a wide array of available sources to obtain the data, such as SEC filings easily. However, it is not so in markets with less investor interest, such as the CEE region or Latin America. Often, the only sources containing the data are primary reports by the company itself. Scarce secondary sources may provide data of dubious reliability. This leads to an excessive workload for analysts, implying the necessity to adapt existing intelligent methods for processing financial data.

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