An Enhanced MIBKA-CNN-BiLSTM Model for Fake Information Detection.

IF 3.9 3区 医学 Q1 ENGINEERING, MULTIDISCIPLINARY
Sining Zhu, Guangyu Mu, Jie Ma, Xiurong Li
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Abstract

The complexity of fake information and the inefficiency of parameter optimization in detection models present dual challenges for current detection technologies. Therefore, this paper proposes a hybrid detection model named MIBKA-CNN-BiLSTM, which significantly improves detection accuracy and efficiency through a triple-strategy enhancement of the Black Kite Optimization Algorithm (MIBKA) and an optimized dual-channel deep learning architecture. First, three improvements are introduced in the MIBKA. The population initialization process is restructured using circle chaotic mapping to enhance parameter space coverage. The conventional random perturbation is replaced by a random-to-elite differential mutation strategy (DE/rand-to-best/1) to balance global exploration and local exploitation. Moreover, a logarithmic spiral opposition-based learning (LSOBL) mechanism is integrated to dynamically explore the opposition solution space. Second, a CNN-BiLSTM dual-channel feature extraction network is constructed, with hyperparameters such as the number of convolutional kernels and LSTM units optimized by MIBKA to enable adaptive model structure alignment with task requirements. Finally, a high-quality fake information dataset is created based on social media platforms, including CCTV. The experimental results show that our model achieves the highest accuracy on the self-built dataset, which is 3.11% higher than the optimal hybrid model. Additionally, on the Weibo21 dataset, our model's accuracy and F1-score increased by 1.52% and 1.71%, respectively, compared to the average values of all baseline models. These findings offer a practical and effective approach for detecting lightweight and robust false information.

Abstract Image

Abstract Image

Abstract Image

虚假信息检测的增强MIBKA-CNN-BiLSTM模型。
虚假信息的复杂性和检测模型参数优化的低效率对当前的检测技术提出了双重挑战。因此,本文提出了一种名为MIBKA- cnn - bilstm的混合检测模型,该模型通过对黑风筝优化算法(MIBKA)的三策略增强和优化的双通道深度学习架构,显著提高了检测精度和效率。首先,介绍了MIBKA中的三个改进。利用圆混沌映射重构种群初始化过程,提高参数空间覆盖率。传统的随机扰动被随机到精英的差异突变策略(DE/rand-to-best/1)所取代,以平衡全局探索和局部开发。此外,还集成了对数螺旋对抗学习(LSOBL)机制来动态探索对抗解空间。其次,构建CNN-BiLSTM双通道特征提取网络,通过MIBKA优化卷积核数和LSTM单元等超参数,使模型结构自适应与任务要求对齐;最后,基于包括CCTV在内的社交媒体平台,创建了高质量的虚假信息数据集。实验结果表明,该模型在自建数据集上的准确率最高,比最优混合模型提高了3.11%。此外,在Weibo21数据集上,与所有基线模型的平均值相比,我们的模型的准确率和f1得分分别提高了1.52%和1.71%。这些发现为检测轻量级和鲁棒性虚假信息提供了一种实用有效的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Biomimetics
Biomimetics Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
3.50
自引率
11.10%
发文量
189
审稿时长
11 weeks
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