基于广义学习系统和卷积神经网络的诈骗呼叫识别

Songze Li, Guoliang Xu, Yang Liu
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引用次数: 0

摘要

近年来,诈骗手段不断更新,犯罪信息更加隐蔽,传统的模型特征工程存在人工特征设计主观性问题。为了解决这一问题,提出了一种基于广义学习和双通道卷积神经网络的模型(BLS-DCCNN)。首先,将广义学习系统从监督预测方法转化为综合特征生成方法,对原始数据生成映射特征和增强特征;然后,对生成的特征进行重构,整合模块重构数据分布。最后,将双通道卷积神经网络与浅层和深层网络结构相结合,提取全局和局部特征,预测最终的类别标签,并引入Focal Loss函数来解决正负样本不平衡问题。在真实的电信数据集上进行了实验和模型比较,实验结果表明,与传统的机器学习模型(如支持向量机和随机森林)以及深度学习模型(如长短期记忆网络)相比,该模型在准确率、召回率和F1分数方面都有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fraud Call Identification Based on Broad Learning System and Convolutional Neural Networks
In recent years, fraudulent methods are constantly updated, criminal information is more hidden, and there is a problem of subjectivity of artificial feature design in traditional model feature engineering. To address this problem, a model based on broad learning and dual-channel convolutional neural network is proposed (BLS-DCCNN). First, the broad learning system is transformed from a supervised prediction method to an integrated feature generation method to generate mapped features and enhanced features for the original data. Then, the generated features are reconstructed to integrate the module to reconstruct the data distribution. Finally, a dual-channel convolutional neural network is combined with the shallow and deep layer network structure to extract global and local features, predict the final category labels, and introduce the Focal Loss function is introduced to solve the problem of positive and negative sample imbalance. Experiments and model comparisons are conducted on real telecommunication datasets, and the exper-imental results show that the model has significantly improved both accuracy, recall and F1 scores compared with traditional machine learning models such as support vector machines and random forests, and deep learning models such as long and short term memory networks.
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