IAW 2019 Interpretable AI for Well-being: Understanding Cognitive Bias and Social Embeddedness
Proceedings of the Symposium Interpretable AI for Well-being: Understanding Cognitive Bias and Social Embeddedness
co-located with Association for the Advancement of Artificial Intelligence 2019 Spring Symposium (AAAI-Spring Symposium 2019)
Suggested Best Practices for Interpreting Deep Learning Models via Input-Level Importance Scores (text not included) Avanti Shrikumar
Session 8: Poster and Demonstration
What Makes a Good Diagnosis: An Algorithm to Detect Biased Training Data (text not included) Madeleine Schneider,
Robert Thomsons
Future Prototyping Methodology: What is a well-being for the Future Society and how AI handles "appropriateness (text not included) Miwa Nishinaka
Sleep Stage Estimation Through Mattress Sensor (text not included) Ryo Takano,
Akari Tobaru,
Iko Nakari,
Keiki Takadama
2019-09-06: submitted by Takashi Kido,
metadata incl. bibliographic data published under Creative Commons CC0 2019-10-08: published on CEUR-WS.org
|valid HTML5|