scispace - formally typeset
Z

Zhenhui Li

Researcher at Pennsylvania State University

Publications -  125
Citations -  8757

Zhenhui Li is an academic researcher from Pennsylvania State University. The author has contributed to research in topics: Reinforcement learning & Graph (abstract data type). The author has an hindex of 39, co-authored 120 publications receiving 5572 citations. Previous affiliations of Zhenhui Li include Salesforce.com & University of Illinois at Urbana–Champaign.

Papers
More filters
Posted Content

How Do We Move: Modeling Human Movement with System Dynamics.

TL;DR: In this article, the authors propose to model state transition in human movement from a novel perspective, by learning the decision model and integrating the system dynamics, which can generate trajectories similar to real-world ones and outperform the state-of-the-art methods in predicting the next location and generating long-term future trajectories.
Posted Content

Learning to Simulate on Sparse Trajectory Data

TL;DR: In this article, the authors propose a novel framework ImInGAIL to address the problem of learning to simulate the driving behavior from sparse real-world data, which incorporates data interpolation with the behavior learning process of imitation learning.
Posted Content

Improving Generalization in Meta-learning via Task Augmentation

TL;DR: In this paper, two task augmentation methods, namely MetaMix and Channel Shuffle, are proposed to improve the generalization capability of the initialization of a meta-learning model.
Posted Content

Relation-aware Meta-learning for Market Segment Demand Prediction with Limited Records

TL;DR: A novel algorithm is proposed, RMLDP, to incorporate a multi-pattern fusion network (MPFN) with a meta-learning paradigm to facilitate the learning process in the target segments even facing a shortage of related training data by leveraging the learned knowledge from data-sufficient source segments.
Posted Content

Targeted Source Detection for Environmental Data.

TL;DR: This paper proposes a technique to simultaneously conduct source detection and prediction, which outperforms other approaches in the interdisciplinary case study of the identification of potential groundwater contamination within a region of high-density shale gas development.