高密度云服务器复杂数据融合中基于多注意力情感优化模型的智能分析

Preetjot Singh
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引用次数: 0

摘要

基于多关注的复杂数据情感优化模型是一种用于复杂数据集情感分析的新型混合模型。它结合了多种互补机制,包括带有注意记忆网络的递归神经网络(RNN)和组织多模态训练数据的管理技术。该模型不仅能够提供较高的情感分类准确率,而且能够从部分标记的训练数据中学习。首先,RNN有助于从异构特征的混合物中捕获详细和复杂的信息。此外,注意记忆网络有助于总结数据的高级特征,并与输入数据的其他维度建立对应关系。最后,管理技术有助于利用多种知识来源来优化模型性能。该混合模型能够捕获多个数据集的跨模态关系和共同特征,并允许更有效的融合过程。综上所述,基于多注意力的复杂数据情感优化模型是一种有效的情感分析工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Smart Analysis of Multi-Attention Based Sentimental Optimization Model for Complex Data Fusion in High Density Cloud Servers
Multi-attention based sentimental optimization model for complex data fusion is a new hybrid model for sentiment analysis of complicated datasets. It combines multiple complementary mechanisms, including a recurrent neural network (RNN) with an attention memory network and an administrative technique to organize multi-modal training data. The model can not only provide high accuracy in sentiment categorization, but also be able to learn from partially labeled training data. Firstly, the RNN helps to capture detailed and complex information from the mixtures of heterogeneous features. Also, the attention memory network helps to summarize high-level features of the data and establish correspondent relationships with other dimensions of the input data. Finally, the administrative technique helps to make use of multiple sources of knowledge to optimize the model performances. This hybrid model has the ability to capture cross-modal relations and common features of multiple datasets and allows for a more effective fusion process. In summary, the multi-attention based sentimental optimization model for complex data fusion is an effective and efficient tool for sentiment analysis.
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