论文标题
VAE-LIME:针对用于熨斗行业的本地数据驱动模型的基于生成模型的深度模型方法
VAE-LIME: Deep Generative Model Based Approach for Local Data-Driven Model Interpretability Applied to the Ironmaking Industry
论文作者
论文摘要
应用于生成数据驱动模型的机器学习缺乏透明度,导致过程工程师失去信心依靠模型预测来优化其工业流程。使用数据驱动的模型将行业的流程带入一定水平的自主权,因为这些模型的第一个用户是经常经验经验的过程中的专家。有必要暴露于过程工程师,而不仅仅是模型预测,而是其解释性。为此,文献中已经提出了几种方法。最近,局部可解释的模型不足解释(LIME)方法引起了研究界的极大兴趣。该方法的原理是通过在本地生成随机人工数据点来训练正在局部近似黑框模型的线性模型。最近出现了基于石灰的模型局部可解释性解决方案,以改善原始方法。我们在本文中介绍了一种新颖的方法Vae-lime,以供数据驱动模型的局部解释性,以预测爆炸炉产生的热金属温度。这样的熨斗过程数据的特征是多元时间序列,高相关代表喷火炉中的基础过程。我们的贡献是使用差异自动编码器(VAE)从数据中学习复杂的爆炸炉过程特征。 VAE的目的是生成最佳的人工样品,以训练一个局部可解释的模型,以更好地代表黑盒模型处理的输入样本附近的黑框模型以进行预测。与石灰相比,Vae-lime显示出具有黑色框模型的局部可解释线性模型的局部保真度,从而实现了可解释的模型。
Machine learning applied to generate data-driven models are lacking of transparency leading the process engineer to lose confidence in relying on the model predictions to optimize his industrial process. Bringing processes in the industry to a certain level of autonomy using data-driven models is particularly challenging as the first user of those models, is the expert in the process with often decades of experience. It is necessary to expose to the process engineer, not solely the model predictions, but also their interpretability. To that end, several approaches have been proposed in the literature. The Local Interpretable Model-agnostic Explanations (LIME) method has gained a lot of interest from the research community recently. The principle of this method is to train a linear model that is locally approximating the black-box model, by generating randomly artificial data points locally. Model-agnostic local interpretability solutions based on LIME have recently emerged to improve the original method. We present in this paper a novel approach, VAE-LIME, for local interpretability of data-driven models forecasting the temperature of the hot metal produced by a blast furnace. Such ironmaking process data is characterized by multivariate time series with high inter-correlation representing the underlying process in a blast furnace. Our contribution is to use a Variational Autoencoder (VAE) to learn the complex blast furnace process characteristics from the data. The VAE is aiming at generating optimal artificial samples to train a local interpretable model better representing the black-box model in the neighborhood of the input sample processed by the black-box model to make a prediction. In comparison with LIME, VAE-LIME is showing a significantly improved local fidelity of the local interpretable linear model with the black-box model resulting in robust model interpretability.