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Journal ArticleDOI

Materials Informatics: Statistical Modeling in Material Science.

TLDR
A comparison between medicinal chemistry/drug design and materials‐related QSAR modeling is provided and the importance of developing new, materials‐specific descriptors is highlighted.
Abstract
Material informatics is engaged with the application of informatic principles to materials science in order to assist in the discovery and development of new materials. Central to the field is the application of data mining techniques and in particular machine learning approaches, often referred to as Quantitative Structure Activity Relationship (QSAR) modeling, to derive predictive models for a variety of materials-related "activities". Such models can accelerate the development of new materials with favorable properties and provide insight into the factors governing these properties. Here we provide a comparison between medicinal chemistry/drug design and materials-related QSAR modeling and highlight the importance of developing new, materials-specific descriptors. We survey some of the most recent QSAR models developed in materials science with focus on energetic materials and on solar cells. Finally we present new examples of material-informatic analyses of solar cells libraries produced from metal oxides using combinatorial material synthesis. Different analyses lead to interesting physical insights as well as to the design of new cells with potentially improved photovoltaic parameters.

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Citations
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Plots Transformations And Regression An Introduction To Graphical Methods Of Diagnostic Regression Analysis

Michael Frueh
TL;DR: In this paper, plots transformations and regression is used as an introduction to graphical methods of diagnostic regression analysis, but end up in malicious downloads, instead of reading a good book with a cup of coffee in the afternoon, instead they are facing with some infectious bugs inside their laptop.
Journal ArticleDOI

DataWarrior: an evaluation of the open-source drug discovery tool

TL;DR: In the era of big data and data-driven science, DataWarrior stands out as a technology that combines prediction of physicochemical properties of pharmaceutical interest, cheminformatics calculations, multivariate data analysis, and interactive visualization with dynamic plots.
Journal ArticleDOI

Safety informatics as a new, promising and sustainable area of safety science in the information age

TL;DR: The three key purposes of this paper are to analyze the historical development of safety informatics, to review the research progress of safety Informatics, and to review limitations and propose future directions in the field ofsafety informatics.
Journal ArticleDOI

RANdom SAmple Consensus (RANSAC) algorithm for material-informatics: application to photovoltaic solar cells

TL;DR: This work describes the first application of RNASAC in material informatics, focusing on the analysis of solar cells, and demonstrates that for three datasets representing different metal oxide based solar cell libraries RANSAC-derived models select descriptors previously shown to correlate with key photovoltaic properties and lead to good predictive statistics for these properties.
Journal ArticleDOI

Opportunities and Challenges for Machine Learning in Materials Science

TL;DR: The authors provide an overview of the areas where machine learning has recently had significant impact in materials science, and then provide a more detailed discussion on determining the accuracy and domain of applicability of some common types of machine learning models.
References
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Journal ArticleDOI

Comparative molecular field analysis (CoMFA). 1. Effect of shape on binding of steroids to carrier proteins.

TL;DR: The main features of the CoMFA approach, exemplified by analyses of the affinities of 21 varied steroids to corticosteroid and testosterone-binding globulins, and a number of advances in the methodology of molecular graphics are described.
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Fast and Accurate Modeling of Molecular Atomization Energies with Machine Learning

TL;DR: A machine learning model is introduced to predict atomization energies of a diverse set of organic molecules, based on nuclear charges and atomic positions only, and applicability is demonstrated for the prediction of molecular atomization potential energy curves.
Journal ArticleDOI

Best Practices for QSAR Model Development, Validation, and Exploitation.

TL;DR: Most critical QSAR modeling routines that are regarded as best practices in the field are examined, including procedures used to validate models, both internally and externally, as well as the need to define model applicability domains that should be used when models are employed for the prediction of external compounds or compound libraries.
Journal ArticleDOI

Efficiency of bulk-heterojunction organic solar cells

TL;DR: The basic working principles and the state of the art device design of bulk heterojunction solar cells are reviewed and the importance of high power conversion efficiencies for the commercial exploitation is outlined and different efficiency models for bulk heterovoltaic cells are discussed.
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