基于多维指标权重的文本信息处理

Yuliang Yang, Zhèng-Hóng Lin, Yuzhong Zhou, Jiahao Shi, Jie Lin
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引用次数: 0

摘要

随着人工智能和无线通信技术的快速发展,文本信息的丰富性显著增加,伴随着创新、应用前景、关键技术和预期结果等多维指标的过剩。从这些多方面的指标中提取有价值的信息并建立有效的复合评价权重框架是文本信息处理中的关键挑战。为此,本文提出了一种利用多维指标权重(MDIWs)的文本信息处理新方法。我们的方法包括从文本中提取语义信息并将其输入到基于lstm的文本信息处理器(TIP)中以生成mdiw。然后处理这些mdiw以创建判断矩阵,然后进行特征值分解和规范化,捕获复杂的语义关系。我们的框架增强了对文本数据中多维方面的理解,为情感分析、信息检索和内容摘要等各种应用提供了潜在的好处。实验结果强调了我们的方法在改进和利用mdiw以提高理解和决策方面的有效性。这项工作通过提供一种结构化的方法来解决多维度量评估的复杂性,从而有助于增强文本信息处理,从而在各个领域实现更准确和更明智的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Textual Information Processing Based on Multi-Dimensional Indicator Weights
With the rapid advancement of artificial intelligence and wireless communication technologies, the abundance of textual information has grown significantly, accompanied by a plethora of multidimensional metrics such as innovation, application prospects, key technologies, and expected outcomes. Extracting valuable insights from these multifaceted indicators and establishing an effective composite evaluation weighting framework poses a pivotal challenge in text information processing. In response, we propose a novel approach in this paper to textual information processing, leveraging multi-dimensional indicator weights (MDIWs). Our method involves extracting semantic information from text and inputting it into an LSTM-based textual information processor (TIP) to generate MDIWs. These MDIWs are then processed to create a judgment matrix following by eigenvalue decomposition and normalization, capturing intricate semantic relationships. Our framework enhances the comprehension of multi-dimensional aspects within textual data, offering potential benefits in various applications such as sentiment analysis, information retrieval, and content summarization. Experimental results underscore the effectiveness of our approach in refining and utilizing MDIWs for improved understanding and decision-making. This work contributes to the enhancement of text information processing by offering a structured approach to address the complexity of multidimensional metric evaluation, thus enabling more accurate and informed decision-making in various domains.
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