通过意见抽取来强化治理问题的模式

K. Shaukat, Talha Mahboob Alam, M. Ahmed, S. Luo, I. Hameed, Muhammad Shahid Iqbal, Jiaming Li, Muhammad Atif Iqbal
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引用次数: 13

摘要

我们生活在一个数据呈指数级增长的世界。通过网络获取的大多数数据都是非结构化的。世界各地的许多组织、机构和政府都会收集有关其产品、服务或政策的公众意见。面对成千上万条关于某种产品、服务或政策的评论,我们不可能从中得出某种最终的想法。为了处理这个问题,迫切需要一种模型,它可以从数据中提取有意义的信息,以便为业务的有效增长和组织或政府的顺利运行做出正确和及时的决策。否则,收集和存储数据的实践将无效。在本研究中,我们侧重于对旁遮普邦南部的问题进行广泛的公众调查,对收集到的数据进行适当的处理,并预测公众舆论的趋势,以供决策。自然语言处理(NLP)和机器学习(ML)已经解决了这个问题。不同的数据预处理技术被用来去除数据中的噪声。我们的实验表明,失业、贫困、教育和腐败是目标地区的主要问题。这项研究将有助于政府官员和非政府组织集中注意具体区域所提出的问题。
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A Model to Enhance Governance Issues through Opinion Extraction
We live in a world where data is expanding exponentially. Most of the data is unstructured when obtained through the web. Many organizations, institutes, and governments worldwide gather public views regarding their products, services, or policies. With thousands of reviews about some product, service, or policy, it is impossible to conclude some kind of final thought from it. To handle this, there is a desperate need for a model that can extract meaningful information from data to make correct and timely decisions for the efficient growth of business and smooth running of an organization or government. Otherwise, the practice of collecting and storing data will be ineffective. In this study, we focused on conducting an extensive public survey on issues of Southern Punjab, carry out appropriate processing on collected data and predict trends in public opinion for decision-making. Natural Language Processing (NLP) and Machine Learning (ML) have dealt with this problem. Different data preprocessing techniques have been utilized to remove the noise from data. Our experiments stated that unemployment, poverty, education, and corruption are the major issues of the targeted region. This study will help government officials and non-governmental organizations to be focused on the extracted issues in the specific region.
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