A Hybrid Domain Adaptation Approach for Identifying Crisis-Relevant Tweets

Author:

Mazloom Reza1,Li Hongmin1,Caragea Doina1,Caragea Cornelia2,Imran Muhammad3

Affiliation:

1. Kansas State University, Manhattan, USA

2. University of Illinois at Chicago, Chicago, USA

3. Qatar Computing Research Institute, Ar-Rayyan, Qatar

Abstract

Huge amounts of data generated on social media during emergency situations is regarded as a trove of critical information. The use of supervised machine learning techniques in the early stages of a crisis is challenged by the lack of labeled data for that event. Furthermore, supervised models trained on labeled data from a prior crisis may not produce accurate results, due to inherent crisis variations. To address these challenges, the authors propose a hybrid feature-instance-parameter adaptation approach based on matrix factorization, k-nearest neighbors, and self-training. The proposed feature-instance adaptation selects a subset of the source crisis data that is representative for the target crisis data. The selected labeled source data, together with unlabeled target data, are used to learn self-training domain adaptation classifiers for the target crisis. Experimental results have shown that overall the hybrid domain adaptation classifiers perform better than the supervised classifiers learned from the original source data.

Publisher

IGI Global

Reference48 articles.

1. Image4Act

2. Ashktorab, Z., Brown, C., Nandi, M., & Culotta, A. (2014). Tweedr: Mining twitter to inform disaster response. Proceedings of the 11th International Conference on Information Systems for Crisis Response and ManagementISCRAM ’14, University Park, PA. Academic Press.

3. An Overview of Sentiment Analysis in Social Media and Its Applications in Disaster Relief

4. Caragea, C., McNeese, N., Jaiswal, A., Traylor, G., Kim, H.-W., Mitra, P., . . . Yen, J. (2011). Classifying Text Messages for the Haiti Earthquake. Proceedings of the 8th International Conference on Information Systems for Crisis Response and ManagementISCRAM ’11, Lisbon, Portugal. Academic Press.

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