数字化历史资产负债表数据:从业者指南

IF 2.6 1区 历史学 Q1 ECONOMICS Explorations in Economic History Pub Date : 2023-01-01 DOI:10.1016/j.eeh.2022.101475
Sergio Correia , Stephan Luck
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引用次数: 4

摘要

本文讨论了如何通过增强光学字符识别(OCR)引擎的预处理和后处理方法,成功实现大规模历史微数据的数字化。尽管近年来由于机器学习的进步,OCR软件有了很大的改进,但现成的OCR应用程序仍然存在很高的错误率,这限制了它们准确提取结构化信息的应用。然而,用其他方法补充OCR可以极大地提高其成功率,使其成为经济历史学家强大而经济高效的工具。本文展示了这些方法,并解释了它们为什么有用。我们将它们应用于两个大型资产负债表数据集,并引入quipucamayoc,这是一个在统一框架中包含这些方法的Python包。
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Digitizing historical balance sheet data: A practitioner’s guide

This paper discusses how to successfully digitize large-scale historical micro-data by augmenting optical character recognition (OCR) engines with pre- and post-processing methods. Although OCR software has improved dramatically in recent years due to improvements in machine learning, off-the-shelf OCR applications still present high error rates which limit their applications for accurate extraction of structured information. Complementing OCR with additional methods can however dramatically increase its success rate, making it a powerful and cost-efficient tool for economic historians. This paper showcases these methods and explains why they are useful. We apply them against two large balance sheet datasets and introduce quipucamayoc, a Python package containing these methods in a unified framework.

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来源期刊
CiteScore
2.50
自引率
8.70%
发文量
27
期刊介绍: Explorations in Economic History provides broad coverage of the application of economic analysis to historical episodes. The journal has a tradition of innovative applications of theory and quantitative techniques, and it explores all aspects of economic change, all historical periods, all geographical locations, and all political and social systems. The journal includes papers by economists, economic historians, demographers, geographers, and sociologists. Explorations in Economic History is the only journal where you will find "Essays in Exploration." This unique department alerts economic historians to the potential in a new area of research, surveying the recent literature and then identifying the most promising issues to pursue.
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