Massachusetts Institute of Technology
Reports on the 2017 AAAI Spring Symposium Series
Bohg, Jeannette (Max Planck Institute for Intelligent Systems) | Boix, Xavier (Massachusetts Institute of Technology) | Chang, Nancy (Google) | Churchill, Elizabeth F. (Google) | Chu, Vivian (Georgia Institute of Technology) | Fang, Fei (Harvard University) | Feldman, Jerome (University of California at Berkeley) | González, Avelino J. (University of Central Florida) | Kido, Takashi (Preferred Networks in Japan) | Lawless, William F. (Paine College) | Montaña, José L. (University of Cantabria) | Ontañón, Santiago (Drexel University) | Sinapov, Jivko (University of Texas at Austin) | Sofge, Don (Naval Research Laboratory) | Steels, Luc (Institut de Biologia Evolutiva) | Steenson, Molly Wright (Carnegie Mellon University) | Takadama, Keiki (University of Electro-Communications) | Yadav, Amulya (University of Southern California)
Reports on the 2017 AAAI Spring Symposium Series
Bohg, Jeannette (Max Planck Institute for Intelligent Systems) | Boix, Xavier (Massachusetts Institute of Technology) | Chang, Nancy (Google) | Churchill, Elizabeth F. (Google) | Chu, Vivian (Georgia Institute of Technology) | Fang, Fei (Harvard University) | Feldman, Jerome (University of California at Berkeley) | González, Avelino J. (University of Central Florida) | Kido, Takashi (Preferred Networks in Japan) | Lawless, William F. (Paine College) | Montaña, José L. (University of Cantabria) | Ontañón, Santiago (Drexel University) | Sinapov, Jivko (University of Texas at Austin) | Sofge, Don (Naval Research Laboratory) | Steels, Luc (Institut de Biologia Evolutiva) | Steenson, Molly Wright (Carnegie Mellon University) | Takadama, Keiki (University of Electro-Communications) | Yadav, Amulya (University of Southern California)
It is also important to remember that having a very sharp distinction of AI A rise in real-world applications of AI has stimulated for social good research is not always feasible, and significant interest from the public, media, and policy often unnecessary. While there has been significant makers. Along with this increasing attention has progress, there still exist many major challenges facing come a media-fueled concern about purported negative the design of effective AIbased approaches to deal consequences of AI, which often overlooks the with the difficulties in real-world domains. One of the societal benefits that AI is delivering and can deliver challenges is interpretability since most algorithms for in the near future. To address these concerns, the AI for social good problems need to be used by human symposium on Artificial Intelligence for the Social end users. Second, the lack of access to valuable data Good (AISOC-17) highlighted the benefits that AI can that could be crucial to the development of appropriate bring to society right now. It brought together AI algorithms is yet another challenge. Third, the researchers and researchers, practitioners, experts, data that we get from the real world is often noisy and and policy makers from a wide variety of domains.
Towards Intelligent Decision Support in Human Team Planning
Kim, Joseph (Massachusetts Institute of Technology) | Shah, Julie A. (Massachusetts Institute of Technology)
Inherent human limitations in teaming environments coupled with complex planning problems spur the integration of intelligent decision support (IDS) systems for human-agent planning. However, prior research in human-agent planning has been limited to dyadic interaction between a single human and a single planning agent. In this paper, we highlight an emerging research area of IDS for human team planning, i.e. environments where the agent works with a team of human planners to enhance the quality of their plans and the ease of making them. We review prior works in human-agent planning and identify research challenges for an agent participating in human team planning.
Playable Experiences at AIIDE 2017
Treanor, Mike (American University) | Warren, Nicholas (University of California, Santa Cruz) | Reed, Mason (University of California, Santa Cruz) | Smith, Adam M. (University of California, Santa Cruz) | Ortiz, Pablo (Massachusetts Institute of Technology) | Coney, Laurel (Massachusetts Institute of Technology) | Sherman, Loren (Massachusetts Institute of Technology) | Carré, Elizabeth ( Massachusetts College of Art and Design ) | Vivatvisha, Nadya ( Harvard University ) | Harrell, D. Fox (Massachusetts Institute of Technology) | Mardo, Paola ( University of Southern California ) | Gordon, Andrew (University of Southern California) | Dormans, Joris (Ludomotion) | Robison, Barrie (Polymorphic Games) | Gomez, Spencer (University of Idaho) | Heck, Samantha (University of Idaho) | Wright, Landon (University of Idaho) | Soule, Terence (University of Idaho)
Online Repositioning in Bike Sharing Systems
Lowalekar, Meghna (Singapore Management University) | Varakantham, Pradeep (Singapore Management University) | Ghosh, Supriyo (Singapore Management University) | Jena, Sanjay Dominik (Université du Québec à Montréal) | Jaillet, Patrick (Massachusetts Institute of Technology)
Due to increased traffic congestion and carbon emissions, Bike Sharing Systems (BSSs) are adopted in various cities for short distance travels, specifically for last mile transportation. The success of a bike sharing system depends on its ability to have bikes available at the "right" base stations at the "right" times. Typically, carrier vehicles are used to perform repositioning of bikes between stations so as to satisfy customer requests. Owing to the uncertainty in customer demand and day-long repositioning, the problem of having bikes available at the right base stations at the right times is a challenging one. In this paper, we propose a multi-stage stochastic formulation, to consider expected future demand over a set of scenarios to find an efficient repositioning strategy for bike sharing systems. Furthermore, we provide a Lagrangian decomposition approach (that decouples the global problem into routing and repositioning slaves and employs a novel DP approach to efficiently solve routing slave) and a greedy online anticipatory heuristic to solve large scale problems effectively and efficiently. Finally, in our experimental results, we demonstrate significant reduction in lost demand provided by our techniques on real world datasets from two bike sharing companies in comparison to existing benchmark approaches.
Face-to-BMI: Using Computer Vision to Infer Body Mass Index on Social Media
Kocabey, Enes (Massachusetts Institute of Technology) | Camurcu, Mustafa (Northeastern University) | Ofli, Ferda (Hamad Bin Khalifa University) | Aytar, Yusuf (Massachusetts Institute of Technology) | Marin, Javier (Massachusetts Institute of Technology) | Torralba, Antonio (Massachusetts Institute of Technology) | Weber, Ingmar (Hamad Bin Khalifa University)
A person's weight status can have profound implications on their life, ranging from mental health, to longevity, to financial income. At the societal level, "fat shaming'" and other forms of "sizeism'' are a growing concern, while increasing obesity rates are linked to ever raising healthcare costs. For these reasons, researchers from a variety of backgrounds are interested in studying obesity from all angles. To obtain data, traditionally, a person would have to accurately self-report their body-mass index (BMI) or would have to see a doctor to have it measured. In this paper, we show how computer vision can be used to infer a person's BMI from social media images. We hope that our tool, which we release, helps to advance the study of social aspects related to body weight.
Mapping Twitter Conversation Landscapes
Vosoughi, Soroush (Massachusetts Institute of Technology) | Vijayaraghavan, Prashanth (Massachusetts Institute of Technology) | Yuan, Ann (Massachusetts Institute of Technology) | Roy, Deb (Massachusetts Institute of Technology)
While the most ambitious polls are based on standardized interviews with a few thousand people, millions are tweeting freely and publicly in their own voices about issues they care about. This data offers a vibrant 24/7 snapshot of people's response to various events and topics. The sheer scale of the data on Twitter allows us to measure in aggregate how the various issues are rising and falling in prominence over time. However, the volume of the data also means that an intelligent tool is required to allow the users to make sense of the data. To this end, we built a novel, interactive web-based tool for mapping the conversation landscapes on Twitter. Our system utilizes recent advances in natural language processing and deep neural networks that are robust with respect to the noisy and unconventional nature of tweets, in conjunction with a scalable clustering algorithm an interactive visualization engine to allow users to tap the mine of information that is Twitter. We ran a user study with 40 participants using tweets about the 2016 US presidential election and the summer 2016 Orlando shooting, demonstrating that compared to more conventional methods, our tool can increase the speed and the accuracy with which users can identify and make sense of the various conversation topics on Twitter.
Characterizing Online Discussion Using Coarse Discourse Sequences
Zhang, Amy X. (Massachusetts Institute of Technology) | Culbertson, Bryan (Google) | Paritosh, Praveen (Google)
In this work, we present a novel method for classifying comments in online discussions into a set of coarse discourse acts towards the goal of better understanding discussions at scale. To facilitate this study, we devise a categorization of coarse discourse acts designed to encompass general online discussion and allow for easy annotation by crowd workers. We collect and release a corpus of over 9,000 threads comprising over 100,000 comments manually annotated via paid crowdsourcing with discourse acts and randomly sampled from the site Reddit. Using our corpus, we demonstrate how the analysis of discourse acts can characterize different types of discussions, including discourse sequences such as Q&A pairs and chains of disagreement, as well as different communities. Finally, we conduct experiments to predict discourse acts using our corpus, finding that structured prediction models such as conditional random fields can achieve an F1 score of 75%. We also demonstrate how the broadening of discourse acts from simply question and answer to a richer set of categories can improve the recall performance of Q&A extraction.
The Fifth International Competition on Knowledge Engineering for Planning and Scheduling: Summary and Trends
Chrpa, Lukás (University of Huddersfield) | McCluskey, Thomas L. (University of Huddersfield) | Vallati, Mauro (University of Huddersfield) | Vaquero, Tiago (Massachusetts Institute of Technology)
We review the 2016 International Competition on Knowledge Engineering for Planning and Scheduling (ICKEPS), the fifth in a series of competitions started in 2005. ICKEPS series focuses on promoting the importance of knowledge engineering methods and tools for automated Planning and Scheduling systems.
The Fifth International Competition on Knowledge Engineering for Planning and Scheduling: Summary and Trends
Chrpa, Lukás (University of Huddersfield) | McCluskey, Thomas L. (University of Huddersfield) | Vallati, Mauro (University of Huddersfield) | Vaquero, Tiago (Massachusetts Institute of Technology)
We review the 2016 International Competition on Knowledge Engineering for Planning and Scheduling (ICKEPS), the fifth in a series of competitions started in 2005. ICKEPS series focuses on promoting the importance of knowledge engineering methods and tools for automated Planning and Scheduling systems.