Award Abstract # 1513721
TWC SBE: Medium: Context-Aware Harassment Detection on Social Media

NSF Org: CNS
Division Of Computer and Network Systems
Awardee: WRIGHT STATE UNIVERSITY
Initial Amendment Date: August 14, 2015
Latest Amendment Date: February 23, 2017
Award Number: 1513721
Award Instrument: Standard Grant
Program Manager: Sara Kiesler
skiesler@nsf.gov
 (703)292-8643
CNS
 Division Of Computer and Network Systems
CSE
 Direct For Computer & Info Scie & Enginr
Start Date: September 1, 2015
End Date: June 30, 2020 (Estimated)
Total Intended Award Amount: $925,104.00
Total Awarded Amount to Date: $957,104.00
Funds Obligated to Date: FY 2015 = $911,868.00
FY 2016 = $0.00

FY 2017 = $0.00
History of Investigator:
  • Amit  Sheth (Principal Investigator)
    amit@sc.edu  (803)777-2094
  • Krishnaprasad  Thirunarayan (Co-Principal Investigator)
  • Valerie  Shalin (Co-Principal Investigator)
Awardee Sponsored Research Office: Wright State University
3640 Colonel Glenn Highway
Dayton
OH  US  45435-0001
(937)775-2425
Sponsor Congressional District: 10
Primary Place of Performance: Wright State University
3640 Colonel Glenn Highway
Dayton
OH  US  45435-0001
Primary Place of Performance
Congressional District:
10
DUNS ID: 047814256
Parent DUNS ID: 047814256
NSF Program(s): Special Projects - CNS,
Secure &Trustworthy Cyberspace
Primary Program Source: 040100 NSF RESEARCH & RELATED ACTIVIT
040100 NSF RESEARCH & RELATED ACTIVIT

040100 NSF RESEARCH & RELATED ACTIVIT
Program Reference Code(s): 025Z, 7434, 7924, 9178, 9251
Program Element Code(s): 1714, 8060
Award Agency Code: 4900
Fund Agency Code: 4900
CFDA Number(s): 47.070

ABSTRACT

As social media permeates our daily life, there has been a sharp rise in the use of social media to humiliate, bully, and threaten others, which has come with harmful consequences such as emotional distress, depression, and suicide. The October 2014 Pew Research survey shows that 73% of adult Internet users have observed online harassment and 40% have experienced it. The prevalence and serious consequences of online harassment present both social and technological challenges. This project identifies harassing messages in social media, through a combination of text analysis and the use of other clues in the social media (e.g., indications of power relationships between sender and receiver of a potentially harassing message.) The project will develop prototypes to detect harassing messages in Twitter; the proposed techniques can be adapted to other platforms, such as Facebook, online forums, and blogs. An interdisciplinary team of computer scientists, social scientists, urban and public affairs professionals, educators, and the participation of college and high schools students in the research will ensure wide impact of scientific research on the support for safe social interactions.

This project combines social science theory and human judgment of potential harassment examples from social media, in both school and workplace contexts, to operationalize the detection of harassing messages and offenders. It develops comprehensive and reliable context-aware techniques (using machine learning, text mining, natural language processing, and social network analysis) to glean information about the people involved and their interconnected network of relationships, and to determine and evaluate potential harassment and harassers. The key innovations of this work include: (1) identification of the generic language of insult, characterized by profanities and other general patterns of verbal abuse, and recognition of target-dependent offensive language involving sensitive topics that are personal to a specific individual or social circle; (2) prediction of harassment-specific emotion evoked in a recipient after reading messages by leveraging conversation history as well as sender's emotions; (3) recognition of a sender's malicious intent behind messages based on the aspects of power, truth (approximated by trust), and familiarity; (4) a harmfulness assessment of harassing messages by fusing aforementioned language, emotion, and intent factors; and (5) detection of harassers from their aggregated behaviors, such as harassment frequency, duration, and coverage measures, for effective prevention and intervention.

PUBLICATIONS PRODUCED AS A RESULT OF THIS RESEARCH

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(Showing: 1 - 10 of 12)
Lu Chen, Justin Martineau, Doreen Cheng and Amit Sheth "Clustering for Simultaneous Extraction of Aspects and Features from Reviews" Proceedings of the 15th Annual Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies (NAACL) , 2016 , p.N16-1093 10.18653/v1/N16-1093
Sanjaya Wijeratne, Lakshika Balasuriya, Derek Doran, Amit Sheth "Word Embeddings to Enhance Twitter Gang Member Profile Identification" IJCAI Workshop on Semantic Machine Learning (SML 2016) , 2016
Sujan Perera, Pablo N. Mendes, Adarsh Alex, Amit P. Sheth, and Krishnaprasad Thirunarayan "Implicit Entity Linking in Tweets" International Semantic Web Conference, Springer International Publishing , 2016 , p.118 10.1007/978-3-319-34129-3_8
Lakshika Balasuriya, Sanjaya Wijeratne, Derek Doran, Amit Sheth "Finding Street Gang Members on Twitter" 2016 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining (ASONAM 2016) , 2016 , p.685
Sanjaya Wijeratne, Lakshika Balasuriya, Amit P. Sheth, Derek Doran "A Semantics-Based Measure of Emoji Similarity" Web Intelligence , 2017
Sanjaya Wijeratne, Lakshika Balasuriya, Amit P. Sheth, Derek Doran "EmojiNet: An Open Service and API for Emoji Sense Discovery" 11th International AAAI Conference on Web and Social Media , 2017 , p.437
Sanjaya Wijeratne, Lakshika Balasuriya, Derek Doran, Amit P. Sheth "Word Embeddings to Enhance Twitter Gang Member Profile Identification" 3rd International Workshop on Semantic Machine Learning (SML 2016) , 2016
Faisal Alshargi, Saeedeh Shekarpour, Tommaso Soru, Amit Sheth, Uwe Quasthoff "Concept2vec: Evaluating Quality of Embeddings for Ontological Concepts" International Semantic Web Conference , 2016
Monireh Ebrahimi, Amir Hossein Yazdavar, Amit Sheth "On the Challenges of Sentiment Analysis for Dynamic Events: A Case Study of the US Presidential Election" IEEE Intelligent Systems , 2017
Mohammadreza Rezvan, Saeedeh Shekarpour, Lakshika Balasuriya, Krishnaprasad Thirunarayan, Valerie L. Shalin, Amit Sheth "A Quality Type-aware Annotated Corpus and Lexicon for Harassment Research" 10th ACM Conference on Web Science (WeSci'18) , 2018 , p.27 doi.org/10.1145/3201064.3201103
Rüsenberg, F., Hampton, A.J., Shalin, V.L. & Feufel, M "Stop-words are not ?nothing?: German modal particles and public engagement in social media" In Proceedings of SBP-BRiMs: LNCS 10899 Social, Cultural and Behavioral Modeling , 2018 , p.89 doi.org/10.1007/978-3-319-93372-6_11
(Showing: 1 - 10 of 12)

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