用于监督机器学习分类的金融银行数据集

I. Raicu
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引用次数: 4

摘要

社交媒体为金融银行机构提高产品和服务质量、了解和适应客户需求开辟了新的途径和机会。通过直接分析客户的反馈,金融银行机构可以根据客户的需求提供个性化的产品和服务。本文提出了一个研究框架,用于创建金融银行数据集,以便使用各种机器学习方法和技术进行情感分类。该数据集包含通过网络抓取技术收集的来自罗马尼亚金融银行社交媒体的2234条金融银行评论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Financial Banking Dataset for Supervised Machine Learning Classification
Social media has opened new avenues and opportunities for financial banking institutions to improve the quality of their products and services and to understand and to adapt to their customers' needs. By directly analyzing the feedback of its customers, financial banking institutions can provide personalized products and services tailored to their customer needs. This paper presents a research framework for creation of a financial banking dataset in order to be used for Sentiment Classification using various Machine Learning methods and techniques. The dataset contains 2234 financial banking comments from Romanian financial banking social media collected via web scraping technique.
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