首页> 外文会议>IEEE International Conference on Fuzzy Systems >Interval Type-2 Fuzzy Logic Based Stacked Autoencoder Deep Neural Network For Generating Explainable AI Models in Workforce Optimization
【24h】

Interval Type-2 Fuzzy Logic Based Stacked Autoencoder Deep Neural Network For Generating Explainable AI Models in Workforce Optimization

机译:基于区间2型模糊逻辑的堆叠式自动编码器深度神经网络,用于在劳动力优化中生成可解释的AI模型

获取原文

摘要

In Utility based industries that employ a large mobile workforce, efficient utilization of field engineers is key to optimal service delivery. The utilization of the engineers can be improved by predicting the future performance of work areas by using machine learning tools such as Deep Neural Networks (DNNs).The dramatic success of DNNs has led to an explosion of its applications. However, the effectiveness of DNNs can be limited by the inability to explain how the models arrived at their predictions.In this paper, we present a novel Type-2 Fuzzy Logic System (FLS) whose inputs are preprocessed by a Stacked Autoencoder Neural Network to add some interpretability to a Deep Neural Network model. The proposed type-2 FLS will contain a small rule set with a small number of antecedents per rule to maximize the model's interpretability. We also present an algorithm which can be used to efficiently train the proposed model.We will compare the proposed model with a Standard Stacked Autoencoder Deep Neural Network, a Multi-Layer Perceptron (MLP) neural network and an Interval Type-2 Fuzzy Logic System.The results show that even though the Standard Stacked Autoencoder and MLP Neural Networks have better performance, they do not provide any insight into the reasoning behind the predictions. The Proposed model, on the other hand, provides better result than the standalone type-2 FLS and a comparable performance to the neural networks and provides a little bit of insight into the decision-making process. Without this insight, we cannot be sure why there is a drop in the performance and we need to further analyze the WA before we can take any decision. This leads to quicker decision making and potentially improving the efficiency of the engineers.
机译:在雇用大量流动劳动力的基于公用事业的行业中,现场工程师的有效利用是优化服务交付的关键。通过使用诸如深度神经网络(DNN)之类的机器学习工具预测工作区域的未来性能,可以提高工程师的利用率。DNN的巨大成功导致了其应用的爆炸式增长。然而,由于无法解释模型如何达到预测,DNN的有效性受到了限制。在本文中,我们提出了一种新颖的Type-2模糊逻辑系统(FLS),其输入由堆叠式自动编码器神经网络进行预处理以为深度神经网络模型增加了一些可解释性。拟议的2型FLS将包含一个小的规则集,每个规则具有少量的先行词,以最大程度地提高模型的可解释性。我们还提出了可用于有效训练提出的模型的算法。我们将提出的模型与标准堆叠式自动编码器深层神经网络,多层感知器(MLP)神经网络和区间2型模糊逻辑系统进行比较结果表明,即使标准堆叠式自动编码器和MLP神经网络具有更好的性能,它们也无法提供有关预测背后原因的任何见解。另一方面,建议的模型提供了比独立的2型FLS更好的结果,并且具有与神经网络相当的性能,并且对决策过程提供了一些见识。没有这种洞察力,我们将无法确定为什么性能会下降,我们需要进一步分析WA,然后才能做出任何决定。这样可以加快决策速度,并有可能提高工程师的效率。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号