Data Anonymization | Web Scraping Tool | ScrapeStorm
Abstract:Data anonymization is the process of converting personal or sensitive information into a non-identifiable form so that it cannot be traced back to a specific person or entity. ScrapeStormFree Download
ScrapeStorm is a powerful, no-programming, easy-to-use artificial intelligence web scraping tool.
Introduction
Data anonymization is the process of converting personal or sensitive information into a non-identifiable form so that it cannot be traced back to a specific person or entity. This allows the data to be used for analysis, sharing, and research while protecting privacy. Anonymous data can no longer be linked to a specific individual, reducing the risk of privacy violations.
Applicable Scene
By anonymizing patient personal information, medical data can be used for research and analysis while protecting privacy. Anonymizing customer and transaction data protects customer privacy while providing data to external analytics partners and third parties. To comply with data protection regulations such as GDPR and CCPA, companies anonymize data to reduce the risk of personal information being leaked. By anonymizing data when it is published by research institutions and public agencies, they can share the data widely while reducing the risk of privacy violations.
Pros: By making individuals unidentifiable, the risk of privacy violations can be significantly reduced. Anonymization overcomes regulatory and privacy issues and allows data to be safely used for research, analysis, and sharing. It is easier to comply with privacy laws and regulations in various countries and regions, reducing legal risks. Even if personal information is leaked, the risk can be minimized if the data is anonymized.
Cons: Anonymization may result in a loss of detail and accuracy in data, which could affect the results of analysis and research. If adequate anonymization is not performed, there is a risk that individuals could be re-identified when combined with other datasets. Effective anonymization requires sophisticated technology and processes, which increases costs and implementation complexity. Legal and ethical issues may arise if anonymized data is not managed properly or there is a risk of re-identification.
Legend
1. Data anonymization technology.
2. Data anonymization technology.
Related Article
Reference Link
https://en.wikipedia.org/wiki/Data_anonymization
https://www.k2view.com/what-is-data-anonymization/
https://policies.google.com/technologies/anonymization?hl=en-US