首页> 外国专利> Inductive Logic Programming Enhancement for Discrete Optimization Enhanced Deep Belief Network Model Training

Inductive Logic Programming Enhancement for Discrete Optimization Enhanced Deep Belief Network Model Training

机译:归纳逻辑编程的增强,以实现离散优化,增强的深度信念网络模型训练

摘要

System and method for training inductive logic programming enhanced deep belief network models for discrete optimization are disclosed. The system initializes (i) a dataset comprising values and (ii) a pre-defined threshold, partitions the values into a first set and a second set based on the pre-defined threshold. Using Inductive Logic Programming (ILP) engine and a domain knowledge associated with the dataset, a machine learning model is constructed on the first set and the second set to obtain Boolean features, and using the Boolean features that are being appended to the dataset, a deep belief network (DBN) model is trained to identify an optimal set of values between the first set and the second set. Using the trained DBN model, the optimal set of values are sampled to generate samples. The pre-defined threshold is adjusted based on the generated samples, and the steps are repeated to obtain optimal samples.
机译:公开了用于训练归纳逻辑编程的增强的深度置信网络模型以进行离散优化的系统和方法。该系统初始化(i)包括值的数据集和(ii)预定阈值,基于预定阈值将值划分为第一组和第二组。使用归纳逻辑编程(ILP)引擎和与数据集关联的领域知识,在第一组和第二组上构建机器学习模型以获得布尔特征,然后使用附加到数据集的布尔特征,训练深度信念网络(DBN)模型以识别第一组和第二组之间的最佳值组。使用训练有素的DBN模型,对最佳值集进行采样以生成样本。基于生成的样本调整预定义阈值,并重复这些步骤以获得最佳样本。

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