Comparison of dimensionality reduction techniques for the visualisation of chemical space in organometallic catalysis

Mario Villares , Carla M. Saunders , Natalie Fey
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Abstract

We have used a Ligand Knowledge Base for bidentate P,P-donor ligands of potential interest to homogeneous catalysis to compare three dimensionality reduction techniques, namely Principal Component Analysis (PCA), Uniform Manifold Approximation and Projection (UMAP) and t-distributed Stochastic Neighbor Embedding (t-SNE). While our previous work on Ligand Knowledge Bases has focused on PCA, here we compare this approach with more recently-published approaches and assess the information retention, visualization, clustering and interpretability which can be achieved for each approach. We find that potential advantages of t-SNE are not realized with a database of the current size (275 entries), and that there is a degree of complementarity between PCA and UMAP. The statistics underlying PCA rely on linear relationships, making interpretation of the resulting plots comparatively straightforward. Since much of chemistry relies on linear structure-property relationships and low-dimensional visualization, the explainability and information retention achieved is attractive. UMAP proved more challenging to interpret, but achieved clear clustering which was often chemically meaningful, and it would be a useful approach for ensuring that distinct subsets of compounds are sampled in a machine-learning context. This analysis also highlighted that the tunability of catalysis achieved through ligand exchange maps well onto some areas of chemical space where closely related ligands cluster, while others represent outliers; these arise from different combinations of steric and electronic effects which chemists will find intuitive.

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有机金属催化化学空间可视化的降维技术比较
我们使用了一个配体知识库,其中包含了对均相催化具有潜在意义的双叉P,P-供体配体,并比较了三种降维技术,即主成分分析(PCA)、统一表层逼近和投影(UMAP)以及t-分布随机邻域嵌入(t-SNE)。虽然我们以前在配体知识库方面的工作主要集中在 PCA 上,但在这里,我们将这种方法与最近发表的更多方法进行了比较,并对每种方法所能实现的信息保留、可视化、聚类和可解释性进行了评估。我们发现,在当前规模(275 个条目)的数据库中,t-SNE 的潜在优势无法实现,而 PCA 和 UMAP 之间存在一定程度的互补性。PCA 的基础统计依赖于线性关系,因此对所得图谱的解释相对简单。由于化学的大部分内容都依赖于线性结构-性质关系和低维度可视化,因此所实现的可解释性和信息保留是非常有吸引力的。事实证明,UMAP 在解释上更具挑战性,但它实现了清晰的聚类,通常具有化学意义,是确保在机器学习中对不同化合物子集进行采样的有用方法。这项分析还突出表明,通过配体交换实现的催化可调性可以很好地映射到化学空间的某些区域,在这些区域中,密切相关的配体聚集在一起,而其他配体则代表离群值;这些离群值产生于立体效应和电子效应的不同组合,化学家会发现这些组合非常直观。
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Artificial intelligence chemistry
Artificial intelligence chemistry Chemistry (General)
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21 days
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