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Работы, на которые ссылается эта работа
Работ: 31
Работа: Structure to Property: Machine Learning Methods for Predicting Electronic Properties of Crystals
Applications of machine learning in drug discovery and development
Jessica Vamathevan, Dominic A. Clark, Paul Czodrowski +8
Обзорная статья2019Цитирований: 4ABIMachine Learning for Catalysis Informatics: Recent Applications and Prospects
Takashi Toyao, Zen Maeno, Satoru Takakusagi +3
Статья2019Цитирований: 4ABIPredicting the state of charge and health of batteries using data-driven machine learning
Man‐Fai Ng, Jin Zhao, Qingyu Yan +2
Статья2020Цитирований: 4ABIMachine learning for alloys
Gus L. W. Hart, Tim Mueller, Cormac Toher +1
Обзорная статья2021Цитирований: 4ABIOn representing chemical environments
Albert P. Bartók, Risi Kondor, Gábor Cśanyi
Статья2013Цитирований: 3ABIMachine-learning guided discovery of a new thermoelectric material
Yuma Iwasaki, Ichiro Takeuchi, Valentin Stanev +10
Статья2019Цитирований: 3ABIGraph Networks as a Universal Machine Learning Framework for Molecules and Crystals
Chi Chen, Weike Ye, Yunxing Zuo +2
Статья2019Цитирований: 3ABIMachine learning assisted materials design and discovery for rechargeable batteries
Yue Liu, Biru Guo, Xinxin Zou +2
Статья2020Цитирований: 3ABIMolecular Mechanics-Driven Graph Neural Network with Multiplex Graph for Molecular Structures
Препринт2020Цитирований: 3ABILearning the electronic density of states in condensed matter
Chiheb Ben Mahmoud, Andrea Anelli, Gábor Cśanyi +1
Статья2020Цитирований: 2ABIDirect Prediction of Phonon Density of States With Euclidean Neural Networks.
Zhantao Chen, Nina Andrejevic, Tess Smidt +7
Статья2021Цитирований: 2ABIPeriodic Graph Transformers for Crystal Material Property Prediction
Keqiang Yan, Yi Liu, Yuchao Lin +1
Препринт2022Цитирований: 2ABI