计算机科学
数据挖掘
财产(哲学)
过程(计算)
人工智能
机器学习
集合(抽象数据类型)
可靠性(半导体)
钥匙(锁)
适用范围
质量(理念)
数据质量
工程类
物理
操作系统
哲学
认识论
功率(物理)
数量结构-活动关系
公制(单位)
量子力学
计算机安全
程序设计语言
运营管理
作者
Giovanni Trezza,Eliodoro Chiavazzo
标识
DOI:10.1021/acs.jcim.4c01766
摘要
It stands to reason that the amount and the quality of data are of key importance for setting up accurate artificial intelligence (AI)-driven models. Among others, a fundamental aspect to consider is the bias introduced during sample selection in database generation. This is particularly relevant when a model is trained on a specialized data set to predict a property of interest and then applied to forecast the same property over samples having a completely different genesis. Indeed, the resulting biased model will likely produce unreliable predictions for many of those out-of-the-box samples, i.e., samples out of the training set. Neglecting such an aspect may hinder the AI-based discovery process, even when high-quality, sufficiently large, and highly reputable data sources are available. To address this challenge, we propose a new method that detects and quantifies data bias, reducing its impact on materials discovery. Our approach, aimed at identifying and excluding those out-of-the-box materials for which the predictions of a pretrained model are likely unreliable, leverages a classification strategy and is validated by means of superconductor and thermoelectric materials as two representative case studies. This methodology, designed to be simple, flexible, and easily adaptable to any architecture, including modern graph equivariant neural networks, aims to enhance the reliability of AI models when applied to diverse and previously unseen materials, thereby contributing to more reliable AI-driven materials discovery.
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