论文标题
通过潜在代表分析进行深度透明的预测
Deep Transparent Prediction through Latent Representation Analysis
论文作者
论文摘要
本文提出了一种新颖的深度学习方法,该方法从训练有素的深神经网络(DNN)中提取潜在信息,并得出简洁的表示,以有效的,统一的方式进行预测。众所周知,DNN能够分析复杂数据。但是,他们在决策中缺乏透明度,从某种意义上说,证明其预测合理性或可视化决策所基于的特征并不直接。此外,它们通常需要大量数据才能学习并能够适应不同的环境。这使他们在医疗保健中的使用很困难,在医疗保健中,信任和个性化是关键问题。透明度与高预测精度相结合是拟议方法的目标目标。它既包括受到监督的DNN培训,也包括从训练有素的DNN中提取的潜在变量的无监督学习。从多个来源的域适应也作为扩展名提供,其中提取的潜在变量表示用于在其他未经通知的环境中生成预测。通过在各个领域进行的一项大型实验研究来说明成功的应用:从MRI和DATSCAN中预测帕金森氏病;通过CT扫描和X射线预测Covid-19和肺炎;零售食品包装中的光学特征验证。
The paper presents a novel deep learning approach, which extracts latent information from trained Deep Neural Networks (DNNs) and derives concise representations that are analyzed in an effective, unified way for prediction purposes. It is well known that DNNs are capable of analyzing complex data; however, they lack transparency in their decision making, in the sense that it is not straightforward to justify their prediction, or to visualize the features on which the decision was based. Moreover, they generally require large amounts of data in order to learn and become able to adapt to different environments. This makes their use difficult in healthcare, where trust and personalization are key issues. Transparency combined with high prediction accuracy are the targeted goals of the proposed approach. It includes both supervised DNN training and unsupervised learning of latent variables extracted from the trained DNNs. Domain Adaptation from multiple sources is also presented as an extension, where the extracted latent variable representations are used to generate predictions in other, non-annotated, environments. Successful application is illustrated through a large experimental study in various fields: prediction of Parkinson's disease from MRI and DaTScans; prediction of COVID-19 and pneumonia from CT scans and X-rays; optical character verification in retail food packaging.