Methods for Knowledge Graph Construction from Text Collections: Development and Applications
Vanni Zavarella

TL;DR
This paper explores scalable methods for automatically constructing Knowledge Graphs from large text collections using NLP, Machine Learning, and Semantic Web techniques across diverse domains.
Contribution
It introduces customized algorithms, benchmark evaluations, and data resources for Knowledge Graph construction from unstructured text data.
Findings
Benchmark evaluation results demonstrate effectiveness of proposed methods.
Customized algorithms improve knowledge extraction accuracy.
Generated Knowledge Graphs facilitate insights in various application domains.
Abstract
Virtually every sector of society is experiencing a dramatic growth in the volume of unstructured textual data that is generated and published, from news and social media online interactions, through open access scholarly communications and observational data in the form of digital health records and online drug reviews. The volume and variety of data across all this range of domains has created both unprecedented opportunities and pressing challenges for extracting actionable knowledge for several application scenarios. However, the extraction of rich semantic knowledge demands the deployment of scalable and flexible automatic methods adaptable across text genres and schema specifications. Moreover, the full potential of these data can only be unlocked by coupling information extraction methods with Semantic Web techniques for the construction of full-fledged Knowledge Graphs, that are…
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