Abstract

The article presents a textual Big Data analytics solution developed in a real setting as a part of a high-capacity document digitization and storage system. A software based on machine learning techniques performs automated extraction and processing of textual contents. The work focuses on performance and data confidence evaluation and describes the approach to computing a set of indicators for textual data quality. It then presents experimental results.

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