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Automatic Question Answering System Based on Convolutional Neural Network and Its Application to Waste Collection System

机译:基于卷积神经网络的自动问题应答系统及其在废物收集系统中的应用

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As a typical cyber-physical-social system (CPSS), the waste collection system profoundly changes the current waste processing mode and greatly relieves the dilemma of waste disposal. However, the existing waste collection system does not provide the function that guides people to deliver the waste into the correct trash bin. In order to improve the efficiency of waste collection system, we propose an automatic question answering system based on convolutional neural network (CNN) to help people classify waste correctly. The construction process of automatic question answering system is divided into the following steps. We first construct a question answering dataset about waste classification, in which question answering pairs from the four waste categories (recyclable waste, harmful waste, dry waste, and wet waste) are included. After the dataset is constructed, we perform text preprocessing on the dataset, which includes denoising, Chinese word segmentation, and removing stop words. After text preprocessing, we use the Word2vec model as feature representation. Then, we construct a CNN and utilize the word embeddings as an input to train model. Finally, we deploy the trained model to the waste collection system, which can answer the question of waste classification that people ask. We also present a comparative analysis of the proposed method and traditional machine learning methods. The experiment shows that the proposed method has higher accuracy of waste classification than that of traditional machine learning methods.
机译:作为典型的网络身体社会系统(CPS),废物收集系统深刻地改变了当前的废物处理模式,大大缓解了废物处理的困境。然而,现有的废物收集系统没有提供指导人们将废物输送到正确的垃圾桶的功能。为了提高废物收集系统的效率,我们提出了一种基于卷积神经网络(CNN)的自动问题应答系统,以帮助人们正确对浪费进行分类。自动问题应答系统的施工过程分为以下步骤。我们首先构建一个关于废物分类的数据集,其中包括来自四种废物类别(可回收废物,有害废物,干废物和湿废物)的问题。构造数据集后,我们在数据集上执行文本预处理,其中包括去噪,中文字段和删除停止单词。在文本预处理之后,我们将Word2Vec模型用作特征表示。然后,我们构建一个CNN并利用单词嵌入式作为训练模型的输入。最后,我们将训练型模型部署到废物收集系统,这可以回答人们问的废物分类问题。我们还提出了对该方法和传统机器学习方法的比较分析。实验表明,该方法的废物分类精度高于传统机器学习方法的准确性。

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