基于SVM分类器和词典的企业大数据分析

Q3 Business, Management and Accounting
S. Radha, C. K. Babu
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引用次数: 1

摘要

数字时代的出现导致了云中各种类型数据的增长。事实上,可能有四分之三的总数据会被视为大数据。在许多组织中,大量的结构化和非结构化数据处于闲置状态。各种类型的数据在预处理、分析、存储和可视化方面都很复杂。云计算为存储的大数据分析和预测客户销售产品的行为提供了合适的平台。电子邮件、笔记、消息、文档、通知和推特评论等非结构化数据(包括来自物联网设备的数据)尚未开发,也未存储在关系数据库中。有关定价、客户行为和竞争对手的有价值信息可能存在于非结构化数据中。这使得基于云的分析成为解决几个问题的有效研究领域,需要降低风险。因此,我们提出了一种方法,通过将SVM分类器与词典和机器学习相结合,从社交网络中的各种类型的非结构化文本数据中提取和聚类情感信息,用于客户行为反馈的情感分析。该方法对深度和隐藏的网络进行了有效的数据收集、数据加载和情感分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enterprise big data analysis using SVM classifier and lexicon dictionary
The emergence of the digital era has led to growth in various types of data in a cloud. In fact, there may be three fourth of the total data will be treated as big data. In many organisations, massive volume of both structured and unstructured data sit idle. Various categories of data are complex for pre-processing, analysing, storing and visualising. Cloud computing provides suitable platform for big data analytics for the storage and for predicting customer behaviour to sell products. Unstructured data like emails, notes, messages, documents, notifications and Twitter comments (including from IoT devices) remains untapped and is not stored in a relational database. Valuable information on pricing, customer behaviour and competitors may be inhumed within unstructured data. This makes cloud-based analytics as an effective research field to address several issues and risks need to be reduced. So we propose a method to extract and cluster sentiment information from various types of unstructured text data from social networks by using SVM classifiers combined with lexicons and machine learning for sentiment analysis of customer behaviour feedback. The method has performed efficient data collection, data loading and efficiently performs sentiment analysis on deep and hidden web.
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来源期刊
International Journal of Enterprise Network Management
International Journal of Enterprise Network Management Business, Management and Accounting-Management of Technology and Innovation
CiteScore
0.90
自引率
0.00%
发文量
28
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