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Sichao Li
Sichao Li
在 anu.edu.au 的电子邮件经过验证 - 首页
标题
引用次数
引用次数
年份
Inverse design of MXenes for high-capacity energy storage materials using multi-target machine learning
S Li, AS Barnard
Chemistry of Materials 34 (11), 4964-4974, 2022
322022
Inverse Design of Nanoparticles Using Multi‐Target Machine Learning
S Li, AS Barnard
Advanced Theory and Simulations 5 (2), 2100414, 2022
192022
Safety-by-design using forward and inverse multi-target machine learning
S Li, AS Barnard
Chemosphere 303, 135033, 2022
92022
A machine learning-driven framework for the property prediction and generative design of multiple principal element alloys
Z Li, S Li, N Birbilis
Materials Today Communications 38, 107940, 2024
42024
The impact of domain-driven and data-driven feature selection on the inverse design of nanoparticle catalysts
S Li, JYC Ting, AS Barnard
Journal of Computational Science 65, 101896, 2022
42022
Exploring the cloud of feature interaction scores in a Rashomon set
S Li, R Wang, Q Deng, A Barnard
2024 International Conference on Learning Representations (ICLR), 2024
32024
Variance tolerance factors for interpreting all neural networks
S Li, A Barnard
2023 International Joint Conference on Neural Networks (IJCNN), 1-9, 2023
3*2023
Causal Paths Allowing Simultaneous Control of Multiple Nanoparticle Properties Using Multi‐Target Bayesian Inference
JYC Ting, S Li, AS Barnard
Advanced Theory and Simulations 5 (10), 2200330, 2022
32022
Optimization-free inverse design of high-dimensional nanoparticle electrocatalysts using multi-target machine learning
S Li, JYC Ting, AS Barnard
International Conference on Computational Science, 307-318, 2022
32022
Multi-target neural network predictions of MXenes as high-capacity energy storage materials in a Rashomon set
S Li, AS Barnard
Cell Reports Physical Science 4 (11), 2023
22023
Practical Attribution Guidance for Rashomon Sets
S Li, AS Barnard, Q Deng
arXiv preprint arXiv:2407.18482, 2024
2024
Automated architectural space layout planning using a physics-inspired generative design framework
Z Li, S Li, G Hinchcliffe, N Maitless, N Birbilis
arXiv preprint arXiv:2406.14840, 2024
2024
Diverse Explanations from Data-driven and Domain-driven Perspectives for Machine Learning Models
S Li, A Barnard
arXiv preprint arXiv:2402.00347, 2024
2024
Inverse Design of Nanoparticles Using Charge Transfer Properties and Multi-Target Machine Learning
S Li, A Barnard
Proceedings of AIChE Annual Meeting 2021, 1-11, 2021
2021
Comparing Three Data Representations for Music with a Sequence-to-Sequence Model
S Li, CP Martin
AI 2020: Advances in Artificial Intelligence: 33rd Australasian Joint …, 2020
2020
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