使用 Pandas 对大数据进行探索性分析和规范化的算法

Mariya Zhekova
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引用次数: 0

摘要

业务流程数字化和提取用户对大数据要求的答案是科学家和研究人员非常感兴趣的现代问题。迄今为止产生的数据,分布在不同的语料库中,远远超出了可分析的范围。因此,需要对这些数据进行收集、识别、清理和规范化,以便最充分地加以利用。细分、假设和假定有助于提高对返回结果的满意度。该研究提出了一种通用方法,用于收集、清理和规范各种来源的数据,将其结构化为适当的模型,然后测试假设并分析所得结果,从而总结出有利于企业做出管理决策的大型学术数据。通过计算语言学的手段和 Python 数据处理库的帮助,这是可能实现的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Algorithm for Exploratory Analysis and Normalization of Big Data with Pandas
The digitization of business processes and the extraction of answers to user requests for big data are modern problems that are of great interest to scientists and researchers. The data generated so far, located in various corpora, is much more than can be analyzed. Therefore, they are collected, identified, cleaned and normalized to be used most adequately. Segmentation, assumptions and hypotheses contribute to the degree of satisfaction with the returned result. The research proposed a general method for collecting, cleaning and normalizing data from various sources, structurally modelling it into appropriate models, then testing hypotheses and analyzing the obtained results to conclude large academic data that will benefit the business in making management decisions. This is possible with the means of computational linguistics and with the help of Python data manipulation libraries.
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