Nicola Colic
2019
Approaching SMM4H with Merged Models and Multi-task Learning
Tilia Ellendorff
|
Lenz Furrer
|
Nicola Colic
|
Noëmi Aepli
|
Fabio Rinaldi
Proceedings of the Fourth Social Media Mining for Health Applications (#SMM4H) Workshop & Shared Task
We describe our submissions to the 4th edition of the Social Media Mining for Health Applications (SMM4H) shared task. Our team (UZH) participated in two sub-tasks: Automatic classifications of adverse effects mentions in tweets (Task 1) and Generalizable identification of personal health experience mentions (Task 4). For our submissions, we exploited ensembles based on a pre-trained language representation with a neural transformer architecture (BERT) (Tasks 1 and 4) and a CNN-BiLSTM(-CRF) network within a multi-task learning scenario (Task 1). These systems are placed on top of a carefully crafted pipeline of domain-specific preprocessing steps.
2018
UZH@SMM4H: System Descriptions
Tilia Ellendorff
|
Joseph Cornelius
|
Heath Gordon
|
Nicola Colic
|
Fabio Rinaldi
Proceedings of the 2018 EMNLP Workshop SMM4H: The 3rd Social Media Mining for Health Applications Workshop & Shared Task
Our team at the University of Zürich participated in the first 3 of the 4 sub-tasks at the Social Media Mining for Health Applications (SMM4H) shared task. We experimented with different approaches for text classification, namely traditional feature-based classifiers (Logistic Regression and Support Vector Machines), shallow neural networks, RCNNs, and CNNs. This system description paper provides details regarding the different system architectures and the achieved results.
2016
Refactoring the Genia Event Extraction Shared Task Toward a General Framework for IE-Driven KB Development
Jin-Dong Kim
|
Yue Wang
|
Nicola Colic
|
Seung Han Beak
|
Yong Hwan Kim
|
Min Song
Proceedings of the 4th BioNLP Shared Task Workshop
Search
Co-authors
- Tilia Ellendorff 2
- Fabio Rinaldi 2
- Jin-Dong Kim 1
- Yue Wang 1
- Seung Han Beak 1
- show all...