Social visualization in software development
Jason Ellis, Catalina Danis, et al.
CHI EA 2006
Entity Type Classification can be defined as the task of assigning category labels to entity mentions in documents. While neural networks have recently improved the classification of general entity mentions, pattern matching and other systems continue to be used for classifying personal data entities (e.g. classifying an organization as a media company or a government institution for GDPR, and HIPAA compliance). We propose a neural model to expand the class of personal data entities that can be classified at a fine grained level, using the output of existing pattern matching systems as additional contextual features. We introduce new resources, a personal data entities hierarchy with 134 types, and two datasets from the Wikipedia pages of elected representatives and Enron emails. We hope these resource will aid research in the area of personal data discovery, and to that effect, we provide baseline results on these datasets, and compare our method with state of the art models on OntoNotes dataset.
Jason Ellis, Catalina Danis, et al.
CHI EA 2006
Ruth Rosenholtz, Nathaniel R. Twarog, et al.
CHI EA 2009
Bc Kwon, Natasha Mulligan, et al.
ISMB 2025
Michael Muller, Heloisa Caroline de Souza Pereira Candello, et al.
ICCC 2023