TY - GEN
T1 - Twitter mining for disaster response
T2 - 12th International Conference on Information Systems for Crisis Response and Management, ISCRAM 2015
AU - Li, Hongmin
AU - Guevara, Nicolais
AU - Herndon, Nic
AU - Caragea, Doina
AU - Neppalli, Kishore
AU - Caragea, Cornelia
AU - Squicciarini, Anna
AU - Tapia, Andrea H.
PY - 2015
Y1 - 2015
N2 - Microblogging data such as Twitter data contains valuable information that has the potential to help improve the speed, quality, and efficiency of disaster response. Machine learning can help with this by prioritizing the tweets with respect to various classification criteria. However, supervised learning algorithms require labeled data to learn accurate classifiers. Unfortunately, for a new disaster, labeled tweets are not easily available, while they are usually available for previous disasters. Furthermore, unlabeled tweets from the current disaster are accumulating fast. We study the usefulness of labeled data from a prior source disaster, together with unlabeled data from the current target disaster to learn domain adaptation classifiers for the target. Experimental results suggest that, for some tasks, source data itself can be useful for classifying target data. However, for tasks specific to a particular disaster, domain adaptation approaches that use target unlabeled data in addition to source labeled data are superior.
AB - Microblogging data such as Twitter data contains valuable information that has the potential to help improve the speed, quality, and efficiency of disaster response. Machine learning can help with this by prioritizing the tweets with respect to various classification criteria. However, supervised learning algorithms require labeled data to learn accurate classifiers. Unfortunately, for a new disaster, labeled tweets are not easily available, while they are usually available for previous disasters. Furthermore, unlabeled tweets from the current disaster are accumulating fast. We study the usefulness of labeled data from a prior source disaster, together with unlabeled data from the current target disaster to learn domain adaptation classifiers for the target. Experimental results suggest that, for some tasks, source data itself can be useful for classifying target data. However, for tasks specific to a particular disaster, domain adaptation approaches that use target unlabeled data in addition to source labeled data are superior.
UR - http://www.scopus.com/inward/record.url?scp=84947791552&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=84947791552&partnerID=8YFLogxK
M3 - Conference contribution
AN - SCOPUS:84947791552
T3 - ISCRAM 2015 Conference Proceedings - 12th International Conference on Information Systems for Crisis Response and Management
BT - ISCRAM 2015 Conference Proceedings - 12th International Conference on Information Systems for Crisis Response and Management
A2 - Palen, Leysia A.
A2 - Comes, Tina
A2 - Buscher, Monika
A2 - Hughes, Amanda Lee
A2 - Palen, Leysia A.
PB - Information Systems for Crisis Response and Management, ISCRAM
Y2 - 24 May 2015 through 27 May 2015
ER -