


default search action
AAAI Spring Symposia 2018: Palo Alto, CA, USA
- 2018 AAAI Spring Symposia, Stanford University, Palo Alto, California, USA, March 26-28, 2018. AAAI Press 2018
AI and Society: Ethics, Safety and Trustworthiness in Intelligent Agents
- Oliver Bendel:
From GOODBOT to BESTBOT. - Oliver Bendel:
The Uncanny Return of Physiognomy. - Umang Bhatt:
Maintaining the Humanity of Our Models. - Emanuelle Burton, Kristel Clayville, Judy Goldsmith, Nicholas Mattei:
The Heart of the Matter: Patient Autonomy as a Model for the Wellbeing of Technology Users. - Stefania Costantini, Giovanni De Gasperis, Abeer Dyoub, Valentina Pitoni:
Trustworthiness and Safety for Intelligent Ethical Logical Agents via Interval Temporal Logic and Runtime Self-Checking. - Kyle Dent:
Ethical Considerations for AI Researchers. - Piotr J. Gmytrasiewicz, George Moe, Adolfo Moreno:
Interactive Agent that Understands the User. - Philip C. Jackson Jr.:
Toward Beneficial Human-Level AI... and Beyond. - Andrea Loreggia, Nicholas Mattei, Francesca Rossi, Kristen Brent Venable:
Preferences and Ethical Principles in Decision Making. - Rafal Rzepka, Kenji Araki:
Importance of Contextual Knowledge in Artificial Moral Agents Development. - Nolan P. Shaw, Andreas Stöckel, Ryan W. Orr, Thomas Finn Lidbetter, Robin Cohen:
Towards Provably Moral AI Agents in Bottom-Up Learning Frameworks. - Dan Ventura:
Ethics as Aesthetic for Artificial General Intelligence. - Yetian Wang, Daniel Friyia, Kanzhe Liu, Robin Cohen:
An Architecture for a Military AI System with Ethical Rules. - Mark R. Waser, David J. Kelley:
Architecting a Human-Like Emotion-Driven Conscious Moral Mind for Value Alignment and AGI Safety. - Patti West-Smith, Stephanie Butler, Elijah Mayfield:
Trustworthy Automated Essay Scoring without Explicit Construct Validity. - Andrew B. Williams:
The Potential Social Impact of the Artificial Intelligence Divide.
Artificial Intelligence for the Internet of Everything
- Spencer Breiner, Ram D. Sriram, Eswaran Subrahmanian:
Compositional Models for the Internet of Everything. - Kai Chih Chang, Razieh Nokhbeh Zaeem, K. Suzanne Barber:
Internet of Things: Securing the Identity by Analyzing Ecosystem Models of Devices and Organizations. - Hesham Fouad, Ira S. Moskowitz:
Meta-Agents: Managing Dynamism in the Internet of Things (IoT) with Multi-agent Networks. - Boris A. Galitsky:
Message Validation Pipeline for Agents of the Internet of Everything. - Barry M. Horowitz:
Policy Issues Regarding Implementations of Cyber Attack Resilience Solutions for Cyber Physical Systems. - Brian Jalaian, Alec Koppel, Andre V. Harrison, James Michaelis, Stephen Russell:
On Stream-Centric Learning for Internet of Battlefield Things. - Alexander Kott:
Challenges and Characteristics of Intelligent Autonomy for Internet of Battle Things in Highly Adversarial Environments. - William F. Lawless, Ranjeev Mittu, Donald A. Sofge:
Artificial Intelligence for the Internet of Everything. - Georgiy Levchuk, Krishna R. Pattipati, Adam Fouse, Robert McCormack, Daniel Serfaty:
Active Inference in Multi-Agent Systems: Context-Driven Collaboration and Decentralized Purpose-Driven Team Adaptation. - Joseph B. Lyons, Sean Mahoney, Kevin T. Wynne, Mark A. Roebke:
Viewing Machines as Teammates: A Qualitative Study. - Ira S. Moskowitz, Stephen Russell:
Valuable Information and the Internet of Things. - Michael Mylrea:
AI Enabled Blockchain Smart Contracts: Cyber Resilient Energy Infrastructure and IoT. - Magnus Sahlgren, Erik Ylipää, Barry A. T. Brown, Karey Helms, Airi Lampinen, Donald McMillan, Jussi Karlgren:
The Smart Data Layer. - Michael Wollowski, John McDonald, Vishal Kapashi, Benjamin Chodroff:
The Web of Smart Entities - Towards a Theory of the Next Generation of the Internet of Things.
Beyond Machine Intelligence: Understanding Cognitive Bias and Humanity for Well-Being AI
- Saleh Ahmed, Mahboob Qaosar, Rizka Wakhidatus Sholikah, Yasuhiko Morimoto:
Early Dementia Detection through Conversations to Virtual Personal Assistant. - Christina Alexandris:
Measuring Cognitive Bias in Spoken Interaction and Conversation. - Sachiko Deguchi:
A Study on the UI of Musical Performance System and Score Representation. - Amy Wenxuan Ding:
A Dynamic Learning Model for a Better Personalized Healthcare Using Mobile Health Tools. - Boris Galitsky:
Customers' Retention Requires an Explainability Feature in Machine Learning Systems They Use. - Teruaki Hayashi, Yukio Ohsawa:
Retrieval System for Data Utilization Knowledge Integrating Stakeholders' Interests. - Ayae Ide, Yoichi Motomura, Takao Terano:
Policy Decision Support System in Aging Society Based on Probabilistic Latent Spatial Semantic Structure Modeling. - Tomohiko Inazumi, Jinhwan Kwon, Shinsaku Hiura, Maki Sakamoto:
Texture Suggestion System Considering the Elderly's Preference on 3D Printing. - Takashi Kido, Keiki Takadama:
The Challenges for Understanding Cognitive Bias and Humanity for Well-Being AI - Beyond Machine Intelligence. - John Licato, Mark Boger, Zhitian Zhang:
Developing a Dataset for Personal Attacks and Other Indicators of Biases. - Yunshi Liu, Pujana Paliyawan, Takahiro Kusano, Tomohiro Harada, Ruck Thawonmas:
A Personalized Method for Calorie Consumption Assessment. - Shintaro Nagama, Masayuki Numao:
IoT-based Emotion Recognition Robot to Enhance Sense of Community in Nursing Home. - Nobuyuki Oishi, Masayuki Numao:
Active Online Learning Architecture for Multimodal Sensor-based ADL Recognition. - Mihoko Otake, Masato S. Abe, Masahiro Nochi, Eij Shimizu:
Estimation of Personalized Value through the Analysis of Conversational Data Assisted by Coimagination Method. - Mahboob Qaosar, Saleh Ahmed, Chen Li
, Yasuhiko Morimoto:
Hybrid Sensing and Wearable Smart Device for Health Monitoring and Medication: Opportunities and Challenges. - Sadeq Rahimi:
From Algorithms to Heuristics: Will Androids Ever Make Freudian Slips? - Yusuke Tajima, Akinori Murata, Tomohiro Harada, Keiki Takadama:
Sleep Stage Re-Estimation Method According To Sleep Cycle Change. - Keiki Takadama:
Can Machine Learning Correct Commonly Accepted Knowledge and Provide Understandable Knowledge in Care Support Domain? Tackling Cognitive Bias and Humanity from Machine Learning Perspective. - Ryo Takano, Satoshi Hasegawa, Yuta Umenai, Takato Tatsumi, Keiki Takadama, Toru Shimuta, Toru Yabe, Hideo Matsumoto:
Study of Analytical Methods on the Relationship between Sleep Quality and Stress with a focus on Human Circadian Rhythm. - Akari Tobaru, Fumito Uwano, Takuya Iwase, Kazuma Matsumoto, Ryo Takano, Yusuke Tajima, Yuta Umenai, Keiki Takadama:
Improving Sleep Stage Estimation Accuracy by Circadian Rhythm Extracted from a Low Frequency Component of Heart Rate. - Fumito Uwano, Keiki Takadama:
Ensemble Heart Rate Extraction Method for Biological Data from Water Pressure Sensor. - Hideya Yamamoto, Kaoru Ito, Chihiro Honda, Eiji Aramaki:
Does Digital Dementia Exist?
Data Efficient Reinforcement Learning
- Majid Alkaee Taleghan, Thomas G. Dietterich:
Efficient Exploration for Constrained MDPs. - Josiah P. Hanna, Peter Stone:
Towards a Data Efficient Off-Policy Policy Gradient. - Heejin Jeong, Daniel D. Lee:
Bayesian Q-learning with Assumed Density Filtering. - Jacob Menashe, Peter Stone:
State Abstraction Synthesis for Discrete Models of Continuous Domains. - Mikhail Pavlov, Sergey Kolesnikov, Sergey M. Plis:
Run, Skeleton, Run: Skeletal Model in a Physics-Based Simulation. - Adrian Sosic, Abdelhak M. Zoubir, Heinz Koeppl:
Inverse Reinforcement Learning via Nonparametric Subgoal Modeling. - Ermo Wei, Drew Wicke, David Freelan, Sean Luke:
Multiagent Soft Q-Learning. - Ermo Wei, Drew Wicke, Sean Luke:
Hierarchical Approaches for Reinforcement Learning in Parameterized Action Space.
The Design of the User Experience for Artificial Intelligence (the UX of AI)
- Dorrit Billman, Debra Schreckenghost:
Usability Issues and Guidance for Flexible Execution of Procedural Work. - Johanne Christensen, Benjamin Watson, A. J. Rindos, Stacy Joines:
Building Bridges: A Case Study in Structuring Human-ML Training Interactions via UX. - Richard G. Freedman, Tathagata Chakraborti, Kartik Talamadupula, Daniele Magazzeni, Jeremy D. Frank:
User Interfaces and Scheduling and Planning: Workshop Summary and Proposed Challenges. - Fabien Girardin, Pablo Fleurquin:
Designing for Trust with Machine Learning. - Nick Gisolfi, Artur Dubrawski:
Revealing Actionable Simplicity in Data. - Kuldeep Gohel:
Artificial Digitality. - Erik Harpstead, Christopher J. MacLellan, Robert P. Marinier, Kenneth R. Koedinger:
Towards Natural Cognitive System Training Interactions: A Preliminary Framework. - Karey Helms, Barry A. T. Brown, Magnus Sahlgren, Airi Lampinen:
Design Methods to Investigate User Experiences of Artificial Intelligence. - Aisling Kelliher, Barbara Barry:
Designing Therapeutic Care Experiences with AI in Mind. - Yeawon Kim:
Insectile Indices. - Martin Lindvall, Jesper Molin, Jonas Löwgren:
The Importance of UX for Machine Teaching. - Xiaoxuan Liu, Godiva Veliganilao Reisenbichler:
Trees of Knowledge: Designing with Artificial Intelligence in the Urban Landscape. - Josh Lovejoy:
The UX of AI: Using Google Clips to Understand how a Human-Centered Design Process Elevates Artificial Intelligence. - Betti Marenko:
FutureCrafting. A Speculative Method for an Imaginative AI. - Nikolas Martelaro, Wendy Ju:
A Panel on Cybernetics and the User Experience of AI Systems. - Christine Meinders, Selwa Sweidan:
Knowledge Design - Towards an Inclusive, AI Design Practice. - Sarah Mennicken, Ruth Brillman, Jennifer Thom, Henriette Cramer:
Challenges and Methods in Design of Domain-specific Voice Assistants. - Michael Milano:
Intelligent Devices Retirement Preserve: (un) Natural Wonders. - Afshin Mobramaein, Jim Whitehead, Chandranil Chakraborttii:
Talk to Me About Pong: On Using Conversational Interfaces for Mixed-Initiative Game Design. - Johnathan Pagnutti:
How Can I Cook with This: User Experience Challenges for AI in the Home Kitchen. - Debra Schreckenghost, Scott Bell, David Kortenkamp, James Kramer:
Procedure Automation: Sharing Work with Users. - Aaron Springer, Jean Garcia-Gathright, Henriette Cramer:
Assessing and Addressing Algorithmic Bias - But Before We Get There... - Aaron Springer, Steve Whittaker:
What Are You Hiding? Algorithmic Transparency and User Perceptions. - Janice Y. Tsai, Jofish Kaye:
Hey Scout: Designing a Browser-Based Voice Assistant. - Jason Wong:
Committee of Infrastructure: Civic Agency and Representation. - Qian Yang:
Machine Learning as a UX Design Material: How Can We Imagine Beyond Automation, Recommenders, and Reminders?
Integrating Representation, Reasoning, Learning, and Execution for Goal Directed Autonomy
- Saeid Amiri, Suhua Wei, Shiqi Zhang, Jivko Sinapov, Jesse Thomason, Peter Stone:
Robot Behavioral Exploration and Multi-modal Perception using Dynamically Constructed Controllers. - Roman Barták, Adrien Maillard, Rafael Cauê Cardoso:
Validation of Hierarchical Plans via Parsing of Attribute Grammars. - Michael Cashmore, Andrew Coles, Bence Cserna, Erez Karpas, Daniele Magazzeni, Wheeler Ruml:
Situated Planning for Execution Under Temporal Constraints. - Dongkyu Choi, Pat Langley, Son Thanh To:
Creating and Using Tools in a Hybrid Cognitive Architecture. - Stefania Costantini, Giovanni De Gasperis:
Flexible Goal-Directed Agents' Behavior via DALI MASs and ASP Modules. - Werner Damm, Martin Fränzle, Sebastian Gerwinn, Paul Kröger:
Perspectives on the Validation and Verification of Machine Learning Systems in the Context of Highly Automated Vehicles. - Angel Andres Daruna, Vivian Chu, Weiyu Liu, Meera Hahn, Priyanka Khante, Sonia Chernova, Andrea Thomaz:
SiRoK: Situated Robot Knowledge - Understanding the Balance Between Situated Knowledge and Variability. - Tuan Do, Nikhil Krishnaswamy, James Pustejovsky:
Teaching Virtual Agents to Perform Complex Spatial-Temporal Activities. - Nakul Gopalan:
Planning Hierarchies and their Connections to Language. - Edward Groshev, Aviv Tamar, Maxwell Goldstein, Siddharth Srivastava, Pieter Abbeel:
Learning Generalized Reactive Policies using Deep Neural Networks. - Till Hofmann, Victor Mataré, Stefan Schiffer, Alexander Ferrein, Gerhard Lakemeyer:
Constraint-Based Online Transformation of Abstract Plans into Executable Robot Actions. - Chen Huang, Lantao Liu, Gaurav S. Sukhatme:
Learning to Act in Partially Structured Dynamic Environment. - Pat Langley, Mohan Sridharan, Ben Meadows:
Representation, Use, and Acquisition of Affordances in Cognitive Systems. - David H. Ménager, Dongkyu Choi, Mark Roberts, David W. Aha:
Learning Planning Operators from Episodic Traces. - Matthew Molineaux, Michael W. Floyd, Dustin Dannenhauer, David W. Aha:
Human-Agent Teaming as a Common Problem for Goal Reasoning. - Kyle John Morris, John Anderson, Meng Cheng Lau, Jacky Baltes:
Interaction and Learning in a Humanoid Robot Magic Performance. - Alexander Shleyfman, Erez Karpas:
Position Paper: Reasoning About Domains with PDDL. - Biplav Srivastava:
On Chatbots Exhibiting Goal-Directed Autonomy in Dynamic Environments. - Siddharth Srivastava:
Safe Goal-Directed Autonomy and the Need for Sound Abstractions. - Einoshin Suzuki:
Exploiting Micro-Clusters to Close The Loop in Data-Mining Robots for Human Monitoring. - Lawson L. S. Wong:
Learning Abstractions by Transferring Abstract Policies to Grounded State Spaces. - Shaojun Zhu, David Allen Surovik, Kostas E. Bekris, Abdeslam Boularias:
Information-Efficient Model Identification for Tensegrity Robot Locomotion.
Learning, Inference, and Control of Multi-Agent Systems
- Magnus Boman, Magnus Sahlgren, Olof Görnerup, Daniel Gillblad:
Learning Machines. - Panayiotis Danassis, Boi Faltings:
Learning in Ad-hoc Anti-coordination Scenarios. - Richard Everett, Stephen J. Roberts:
Learning Against Non-Stationary Agents with Opponent Modelling and Deep Reinforcement Learning. - Sam Ganzfried, Qingyun Sun:
Bayesian Opponent Exploitation in Imperfect-Information Games. - Yanlin Han, Piotr J. Gmytrasiewicz:
Learning Others' Intentional Models in Multi-Agent Settings Using Interactive POMDPs. - Richard Klíma, Karl Tuyls, Frans A. Oliehoek:
Model-Based Reinforcement Learning under Periodical Observability. - Alexander Peysakhovich, Adam Lerer:
Towards AI that Can Solve Social Dilemmas. - William G. Squires, Sean Luke:
LfD Training of Heterogeneous Formation Behaviors.

manage site settings
To protect your privacy, all features that rely on external API calls from your browser are turned off by default. You need to opt-in for them to become active. All settings here will be stored as cookies with your web browser. For more information see our F.A.Q.