study guides for every class

that actually explain what's on your next test

Data integrity

from class:

Investigative Reporting

Definition

Data integrity refers to the accuracy, consistency, and reliability of data throughout its lifecycle. It ensures that data remains unaltered during storage, processing, and transmission, providing confidence that the information can be trusted for decision-making. Maintaining data integrity is essential when navigating databases, collecting and organizing data, and creating visualizations, as it directly impacts the quality and credibility of any findings or narratives derived from the data.

congrats on reading the definition of data integrity. now let's actually learn it.

ok, let's learn stuff

5 Must Know Facts For Your Next Test

  1. Data integrity can be compromised by various factors such as human error, software bugs, and malicious attacks, making vigilance essential.
  2. Techniques like checksums, encryption, and access controls are commonly used to protect and maintain data integrity throughout its lifecycle.
  3. In the context of government databases, ensuring data integrity is critical to prevent misinformation that can lead to incorrect public policy decisions.
  4. Data integrity is crucial when cleaning datasets because any inaccuracies can propagate through analysis and visualization stages, leading to flawed conclusions.
  5. Storytelling with data heavily relies on integrity; if the underlying data is unreliable, the narrative built around it loses credibility.

Review Questions

  • How can human error impact data integrity when navigating databases?
    • Human error can significantly impact data integrity during database navigation in several ways. For instance, incorrect data entry or misinterpretation of data fields can lead to inaccuracies that compromise the overall quality of the dataset. If these errors go unnoticed, they can mislead investigations and analysis, affecting the credibility of the final reports or stories that are developed from this data.
  • Discuss the importance of data cleansing techniques in maintaining data integrity during the collection phase.
    • Data cleansing techniques are vital in maintaining data integrity during the collection phase because they help identify and rectify inaccuracies before analysis begins. By addressing inconsistencies, duplicates, or errors early on, researchers can ensure that only reliable data enters their analyses. This not only enhances the trustworthiness of any findings but also ensures that subsequent visualizations accurately represent the underlying reality, reinforcing the overall integrity of the reporting process.
  • Evaluate how failures in data integrity could affect storytelling with data in investigative reporting.
    • Failures in data integrity can have profound implications for storytelling with data in investigative reporting. If the underlying data is flawed or unreliable, any narrative constructed around it will likely be misleading or incorrect. This can lead to misinformation being disseminated to the public, eroding trust in journalistic practices. Furthermore, when stakeholders make decisions based on inaccurate reports resulting from poor data integrity, it can have serious consequences for accountability and transparency in governance.

"Data integrity" also found in:

Subjects (111)

© 2024 Fiveable Inc. All rights reserved.
AP® and SAT® are trademarks registered by the College Board, which is not affiliated with, and does not endorse this website.