Reports of the AAAI 2009 spring symposia

Jie Bao, Uldis Bojars, Tanzeem Choudhury, Li Ding, Mark Greaves, Ashish Kapoor, Sandy Louchart, Manish Mehta, Bernhard Nebel, Sergei Nirenburg, Tim Oates, David L. Roberts, Antonio Sanfilippo, Nenad Stojanovic, Kristen Stubbs, Andrea L. Thomaz, Katherine Tsui, Stefan Woelfl

Research output: Contribution to journalArticle

Abstract

The Association for the Advancement of Artificial Intelligence, in cooperation with Stanford University's Department of Computer Science, was pleased to present the 2009 Spring Symposium Series, held Monday through Wednesday, March 23-25, 2009, at Stanford University. The titles of the nine symposia were Agents That Learn from Human Teachers, Benchmarking of Qualitative Spatial and Temporal Reasoning Systems, Experimental Design for Real- World Systems, Human Behavior Modeling, Intelligent Event Processing, Intelligent Narrative Technologies II, Learning by Reading and Learning to Read, Social Semantic Web: Where Web 2.0 Meets Web 3.0, and Technosocial Predictive Analytics. The goal of the Agents That Learn from Human Teachers symposium was to investigate how we can enable software and robotics agents to leam from real-time interaction with an everyday human partner. The aim of the Benchmarking of Qualitative Spatial and Temporal Reasoning Systems symposium was to initiate the development of a problem repository in the field of qualitative spatial and temporal reasoning and identify a graded set of challenges for future midterm and long-term research. The Experimental Design symposium discussed the challenges of evaluating AI systems. The Human Behavior Modeling symposium explored reasoning methods for understanding various aspects of human behavior, especially in the context of designing intelligent systems that interact with humans. The Intelligent Event Processing symposium discussed the need for more Al-based approaches in event pro-cessing and defined a kind of research agenda for the field, coined as intelligent complex event processing (iCEP). The Intelligent Narrative Technologies IIAAAI symposium discussed innovations, progress, and novel techniques in the research domain. The Learning by Reading and Learning to Read symposium explored two aspects of making natural language texts semantically accessible to, and processable by, machines. The Social Semantic Web symposium focused on the real-world grand challenges in this area. Finally, the Technosocial Predictive Analytics symposium explored new methods for anticipatory analytical thinking that provide decision advantage through the integration of human and physical models.

Original languageEnglish
Pages (from-to)89-95
Number of pages7
JournalAI Magazine
Volume30
Issue number3
Publication statusPublished - Sep 2009
Externally publishedYes

Fingerprint

Benchmarking
Semantic Web
Design of experiments
Processing
Intelligent systems
Computer science
Robotics
Innovation
Predictive analytics

ASJC Scopus subject areas

  • Artificial Intelligence

Cite this

Bao, J., Bojars, U., Choudhury, T., Ding, L., Greaves, M., Kapoor, A., ... Woelfl, S. (2009). Reports of the AAAI 2009 spring symposia. AI Magazine, 30(3), 89-95.

Reports of the AAAI 2009 spring symposia. / Bao, Jie; Bojars, Uldis; Choudhury, Tanzeem; Ding, Li; Greaves, Mark; Kapoor, Ashish; Louchart, Sandy; Mehta, Manish; Nebel, Bernhard; Nirenburg, Sergei; Oates, Tim; Roberts, David L.; Sanfilippo, Antonio; Stojanovic, Nenad; Stubbs, Kristen; Thomaz, Andrea L.; Tsui, Katherine; Woelfl, Stefan.

In: AI Magazine, Vol. 30, No. 3, 09.2009, p. 89-95.

Research output: Contribution to journalArticle

Bao, J, Bojars, U, Choudhury, T, Ding, L, Greaves, M, Kapoor, A, Louchart, S, Mehta, M, Nebel, B, Nirenburg, S, Oates, T, Roberts, DL, Sanfilippo, A, Stojanovic, N, Stubbs, K, Thomaz, AL, Tsui, K & Woelfl, S 2009, 'Reports of the AAAI 2009 spring symposia', AI Magazine, vol. 30, no. 3, pp. 89-95.
Bao J, Bojars U, Choudhury T, Ding L, Greaves M, Kapoor A et al. Reports of the AAAI 2009 spring symposia. AI Magazine. 2009 Sep;30(3):89-95.
Bao, Jie ; Bojars, Uldis ; Choudhury, Tanzeem ; Ding, Li ; Greaves, Mark ; Kapoor, Ashish ; Louchart, Sandy ; Mehta, Manish ; Nebel, Bernhard ; Nirenburg, Sergei ; Oates, Tim ; Roberts, David L. ; Sanfilippo, Antonio ; Stojanovic, Nenad ; Stubbs, Kristen ; Thomaz, Andrea L. ; Tsui, Katherine ; Woelfl, Stefan. / Reports of the AAAI 2009 spring symposia. In: AI Magazine. 2009 ; Vol. 30, No. 3. pp. 89-95.
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