Accounting Management and Optimizing Production Based on Distributed Semantic Recognition

IF 1.5 4区 计算机科学 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING IET Software Pub Date : 2024-06-18 DOI:10.1049/2024/8425877
Ruina Guo, Shu Wang, Guangsen Wei
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Abstract

Accounting management and production optimization are vital aspects of enterprise management, serving as indispensable core components in the modern business landscape. However, conventional methods reliant on manual input exhibit drawbacks such as low recognition accuracy and excessive memory consumption. To address these challenges, semantic recognition technology utilizing voice signals has emerged as a pivotal solution across various industries. Building upon this premise, this paper introduces a distributed semantic recognition-based algorithm for accounting management and production optimization. The proposed algorithm encompasses multiple modules, including a front-end feature extraction module, a channel transmission module, and a voice quality vector quantization module. Additionally, a semantic recognition module is introduced to process the voice signals and generate prediction results. By leveraging extensive accounting management and production data for learning and analysis, the algorithm automatically uncovers patterns and laws within the data, extracting valuable information. To validate the proposed algorithm, this study utilizes the dataset from the UCI machine learning repository and applies it for analysis and processing. The experimental findings demonstrate that the algorithm introduced in this paper outperforms alternative methods. Specifically, it achieves a notable 9.3% improvement in comprehensive recognition accuracy and reduces memory usage by 34.4%. These results highlight the algorithm’s efficacy in enhancing the understanding and analysis of customer needs, market trends, competitors, and other pertinent information within the realm of commercial applications for companies.

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基于分布式语义识别的会计管理与生产优化
会计管理和生产优化是企业管理的重要方面,是现代企业不可或缺的核心组成部分。然而,依赖人工输入的传统方法存在识别准确率低、内存消耗过大等缺点。为了应对这些挑战,利用语音信号的语义识别技术已成为各行各业的重要解决方案。在此前提下,本文介绍了一种基于语义识别的分布式算法,用于会计管理和生产优化。该算法包含多个模块,包括前端特征提取模块、信道传输模块和语音质量向量量化模块。此外,还引入了语义识别模块来处理语音信号并生成预测结果。通过利用广泛的会计管理和生产数据进行学习和分析,该算法可自动发现数据中的模式和规律,从而提取有价值的信息。为了验证所提出的算法,本研究利用了 UCI 机器学习库中的数据集,并将其用于分析和处理。实验结果表明,本文介绍的算法优于其他方法。具体而言,该算法的综合识别准确率显著提高了 9.3%,内存使用量减少了 34.4%。这些结果凸显了该算法在增强对客户需求、市场趋势、竞争对手和其他公司商业应用领域相关信息的理解和分析方面的功效。
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来源期刊
IET Software
IET Software 工程技术-计算机:软件工程
CiteScore
4.20
自引率
0.00%
发文量
27
审稿时长
9 months
期刊介绍: IET Software publishes papers on all aspects of the software lifecycle, including design, development, implementation and maintenance. The focus of the journal is on the methods used to develop and maintain software, and their practical application. Authors are especially encouraged to submit papers on the following topics, although papers on all aspects of software engineering are welcome: Software and systems requirements engineering Formal methods, design methods, practice and experience Software architecture, aspect and object orientation, reuse and re-engineering Testing, verification and validation techniques Software dependability and measurement Human systems engineering and human-computer interaction Knowledge engineering; expert and knowledge-based systems, intelligent agents Information systems engineering Application of software engineering in industry and commerce Software engineering technology transfer Management of software development Theoretical aspects of software development Machine learning Big data and big code Cloud computing Current Special Issue. Call for papers: Knowledge Discovery for Software Development - https://digital-library.theiet.org/files/IET_SEN_CFP_KDSD.pdf Big Data Analytics for Sustainable Software Development - https://digital-library.theiet.org/files/IET_SEN_CFP_BDASSD.pdf
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