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Human-AI Collaborative Approaches to Supporting Multi-stage, Stochastic Multi-criteria Decision Making
The Hong Kong University of Science and Technology Department of Computer Science and Engineering PhD Thesis Defence Title: "Human-AI Collaborative Approaches to Supporting Multi-stage, Stochastic Multi-criteria Decision Making" By Miss Chuhan SHI Abstract: Multi-stage, stochastic multi-criteria decision making (MSMDM) is common in various domains of human activity, such as scientific research and combinatorial games. These decision tasks involve a series of interdependent decision-making stages where options are evaluated based on multiple criteria under uncertainty and variability. Since MSMDM is challenging for decision makers, a number of AI-powered methods have emerged to facilitate MSMDM. However, these methods have inherent limitations, e.g., dependence on training datasets and lack of transparency, especially on complex decision tasks. Therefore, we propose to explore Human-AI (HAI) collaboration approaches for MSMDM. Specifically, this thesis consists of three pieces of work, studying different HAI collaboration approaches and investigating critical issues for representative MSMDM tasks. First, we take the task of deciding research directions in medicinal chemistry as our target problem and propose MedChemLens, an interactive visual system to support users to explore the built decision spaces and make decisions based on their various criteria. It takes an AI-assisted decision-making approach by automatically extracting and organizing molecular features from scholarly publications and visualizing the practicality of associated experiments. Second, we design RetroLens, an HAI collaborative system, which integrates two HAI collaboration methods to facilitate multi-step retrosynthetic route planning in synthetic chemistry. RetroLens adopts a joint action method to help chemists construct the decision spaces for retrosynthetic route planning together with AI and then utilizes AI-assisted decisionmaking to facilitate multi-criteria route revision, empowering personalized decision path exploration. Third, we focus on Go game playing and present a method, HandoverLens. This methods quantifies the potential benefit and cost of assigning each decision making stage to human or AI to promote effective HAI collaboration in simultaneously constructing decision spaces and exploring decision paths of Go playing. In all, these three pieces demonstrate the feasibility of our proposed HAI collaborative approaches to supporting MSMDM. Date: Wednesday, 23 August 2023 Time: 3:00pm - 5:00pm Venue: Room 4475 lifts 25/26 Chairperson: Prof. Hai YANG (CIVL) Committee Members: Prof. Qiong LUO (Supervisor) Prof. Xiaojuan MA (Supervisor) Prof. Qifeng CHEN Prof. Huamin QU Prof. Haibin SU (CHEM) Prof. Li CHEN (HKBU) **** ALL are Welcome ****