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He focuses on event extraction with multi-modal approaches, which encompass across domains such as natural language processing, computer vision and machine learning. He is attempting to fuse the techniques from these domains to pursue a more comprehensive knowledge base. Tongtao received MS degree from Department of Electrical Engineering, Columbia University, BS degree from Department of Applied Physics, Donghua University with \"City's Graduate of Excellence\" and BA from Department of German, Shanghai International Studies University"],"raw_orcid":null,"affiliations":[{"raw_affiliation_string":"Computer Science Department, Rensselaer Polytechnic Institute, Troy, New York 12180-3590, USA","institution_ids":["https://openalex.org/I165799507"]},{"raw_affiliation_string":"Tongtao Zhang is a PhD candidate in the Computer Science Department, Rensselaer Polytechnic Institute and a member of BLENDER. 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Tongtao received MS degree from Department of Electrical Engineering, Columbia University, BS degree from Department of Applied Physics, Donghua University with \"City's Graduate of Excellence\" and BA from Department of German, Shanghai International Studies University","institution_ids":["https://openalex.org/I16718484"]}]},{"author_position":"middle","author":{"id":"https://openalex.org/A5103178893","display_name":"Heng Ji","orcid":"https://orcid.org/0000-0002-7954-7994"},"institutions":[{"id":"https://openalex.org/I165799507","display_name":"Rensselaer Polytechnic Institute","ror":"https://ror.org/01rtyzb94","country_code":"US","type":"education","lineage":["https://openalex.org/I165799507"]},{"id":"https://openalex.org/I4210136895","display_name":"Institute for the Future","ror":"https://ror.org/049tcsg76","country_code":"US","type":"nonprofit","lineage":["https://openalex.org/I4210136895"]}],"countries":["US"],"is_corresponding":true,"raw_author_name":"Heng Ji","raw_affiliation_strings":["Computer Science Department, Rensselaer Polytechnic Institute, Troy, New York 12180-3590, USA","Heng Ji is Edward P. 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She coordinated the NIST TAC Knowledge Base Population task since 2010, served as the Program Committee Chair of NAACL2018, NLP-NABD2018, NLPCC2015 and CSCKG2016, ACL2017 Demo Co-Chair, the Information Extraction area chair for NAACL2012, ACL2013, EMNLP2013, NLPCC2014, EMNLP2015, NAACL2016, ACL2016 and NAACL2019, senior information extraction area chair of ACL2019, the vice Program Committee Chair for IEEE/WIC/ACM WI2013 and CCL2015, Content Analysis Track Chair of WWW2015, and the Financial Chair of IJCAI2016"],"raw_orcid":"https://orcid.org/0000-0002-7954-7994","affiliations":[{"raw_affiliation_string":"Computer Science Department, Rensselaer Polytechnic Institute, Troy, New York 12180-3590, USA","institution_ids":["https://openalex.org/I165799507"]},{"raw_affiliation_string":"Heng Ji is Edward P. Hamilton Development Chair Professor in Computer Science Department of Rensselaer Polytechnic Institute. She received her BA and MA in Computational Linguistics from Tsinghua University and her MS and PhD in Computer Science from New York University. Her research interests focus on natural language processing and its connections with data mining, Social Sciences and vision. She was selected as \"Young Scientist\" and a member of the Global Future Council on the Future of Computing by the World Economic Forum in 2016 and 2017. She received \"AI's 10 to Watch\" Award by IEEE Intelligent Systems in 2013, NSF CAREER award in 2009, Google Research Awards in 2009 and 2014, Sloan Junior Faculty Award in 2012, IBM Watson Faculty Award in 2012 and 2014, Bosch Research Awards in 2015, 2016 and 2017, PACLIC2012 Best Paper Runner-up, \"Best of SDM2013\" paper, and \"Best of ICDM2013\"\n                paper. She is invited by the Secretary of the Air Force and AFRL to join Air Force Data Analytics Expert Panel to inform the Air Force Strategy 2030. 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