On Context- and Sequence-Aware Document Enrichment and Retrieval towards Personalized Recommendations

The amount of unstructured data has grown exponentially during the past two decades and continues to grow at even faster rates. As a consequence, the efficient management of this kind of data came to play an important role in almost all organizations.

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