Interacitve Machine Intelligence

인터렉티브 머신 인텔리전스

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We strive to derive human-like machine intelligence from interactive and autonomous learning experiences. We focus on exploiting/uncovering the merits of Bayesian learning that provides a principled way of allowing machine intelligence to adapt and generalize to unseen data/environments in conjunction with deep learning models and frameworks. We focus on building and promoting interactive systems within which humans and machines (AI agents) collaborate, cooperate, and coordinate through verbal and non-verbal communicative signals. The multi-modal nature of such interactive systems leads our research trajectory to revolve around the research areas including generative modeling, natural language processing (NLP), data mining, human-computer interaction (HCI), and optimization.

Major research field

Generative modeling, Multi-agent RL, model-based RL, collaboration, cooperation, Bayesian machine learning, natural language processing, HCI, data min

Desired field of research

Generative modeling, Multi-agent RL, model-based RL, collaboration, cooperation, Bayesian machine learning, natural language processing, HCI, data min

Research Keywords and Topics

Generative modeling, Multi-agent RL, model-based RL, collaboration, cooperation, Bayesian machine learning, natural language processing, HCI, data min

Research Publications

NeurIPS. Emergent communication under varying sizes and connectivities. Jooyeon Kim and Alice Oh, 2020.
KDD. CoRGi: Content-Rich Graph Neural Networks with Attention. Jooyeon Kim et al., 2020.
WSDM. Leveraging the crowd to detect and reduce the spread of fake news and misinformation. Jooyeon Kim et al., 2018

국가과학기술표준분류

  • EE. 정보/통신
  • EE01. 정보이론
  • EE0108. 인공지능

국가기술지도분류

  • 정보-지식-지능화 사회 구현
  • 012300. 인공지능/지능로봇 기술