Deep learning-based recommendation system for metal–organic frameworks (MOFs)†

IF 6.2 Q1 CHEMISTRY, MULTIDISCIPLINARY
Xiaoqi Zhang, Kevin Maik Jablonka and Berend Smit
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引用次数: 0

Abstract

This work presents a recommendation system for metal–organic frameworks (MOFs) inspired by online content platforms. By leveraging the unsupervised Doc2Vec model trained on document-structured intrinsic MOF characteristics, the model embeds MOFs into a high-dimensional chemical space and suggests a pool of promising materials for specific applications based on user-endorsed MOFs with similarity analysis. This proposed approach significantly reduces the need for exhaustive labeling of every material in the database, focusing instead on a select fraction for in-depth investigation. Ranging from methane storage and carbon capture to quantum properties, this study illustrates the system's adaptability to various applications.

Abstract Image

Abstract Image

基于深度学习的金属有机框架(MOFs)推荐系统
这项研究受在线内容平台的启发,提出了一种金属有机框架(MOF)推荐系统。该模型利用在文档结构化的 MOF 固有特征基础上训练的 Doc2Vec 无监督模型,将 MOF 嵌入高维化学空间,并根据用户认可的 MOF,通过相似性分析,为特定应用推荐了一批有前途的材料。这种方法大大降低了对数据库中每种材料进行详尽标注的需要,而只需选择部分材料进行深入研究。从甲烷存储和碳捕获到量子特性,这项研究说明了该系统对各种应用的适应性。
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CiteScore
2.80
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0.00%
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