Authors
Hemant Purohit, Guozhu Dong, Valerie Shalin, Krishnaprasad Thirunarayan, Amit Sheth
Publication date
2015/12/19
Conference
2015 ieee international conference on smart city/socialcom/sustaincom (smartcity)
Pages
222-228
Publisher
IEEE
Description
Social media platforms facilitate the emergence of citizen communities that discuss real-world events. Their content reflects a variety of intent ranging from social good (e.g., volunteering to help) to commercial interest (e.g., criticizing product features). Hence, mining intent from social data can aid in filtering social media to support organizations, such as an emergency management unit for resource planning. However, effective intent mining is inherently challenging due to ambiguity in interpretation, and sparsity of relevant behaviors in social data. In this paper, we address the problem of multiclass classification of intent with a use-case of social data generated during crisis events. Our novel method exploits a hybrid feature representation created by combining top-down processing using knowledge-guided patterns with bottom-up processing using a bag-of-tokens model. We employ pattern-set creation from a variety …
Total citations
20142015201620172018201920202021202220232024117124131810157
Scholar articles
H Purohit, G Dong, V Shalin, K Thirunarayan, A Sheth - 2015 ieee international conference on smart city …, 2015