Welcome, visitor! [ Login

 

Olson J.E., Data Quality: The Accuracy dimension, Morgan Kaufmann, ISBN 1558608915, (2003).

  • Listed: 9 May 2026 3 h 33 min

Description

Olson J.E., Data Quality: The Accuracy dimension, Morgan Kaufmann, ISBN 1558608915, (2003).

**Olson J.E., Data Quality: The Accuracy dimension, Morgan Kaufmann, ISBN 1558608915, (2003).**

When you see a citation that looks more like a library catalog entry than a headline, it’s easy to assume the content inside will be dry and academic. Yet *Data Quality: The Accuracy Dimension* by Jeff E. Olson, published by Morgan Kaufmann in 2003, is anything but. It’s a cornerstone work that still shapes how data professionals think about **data quality**, especially the critical **accuracy** facet. In this post we’ll unpack why Olson’s insights remain relevant, how they intersect with modern **data governance**, and what practical steps you can take today to boost the accuracy of your own data assets.

### Why Accuracy Is the Heartbeat of Data Quality

Data quality is a multidimensional concept—completeness, consistency, timeliness, and **accuracy** are just a few of the pillars that keep information trustworthy. Olson argues that without accuracy, the other dimensions lose meaning; a dataset can be complete, consistent, and up‑to‑date, yet still lead to disastrous decisions if the numbers themselves are wrong. In today’s **big data** era, where billions of records flow through pipelines daily, the **accuracy dimension** becomes a strategic differentiator for organizations seeking competitive advantage.

### Key Takeaways from Olson’s 2003 Classic

1. **Definition Matters** – Olson defines accuracy as the “closeness of a data value to the true value.” This simple yet precise definition provides a shared language for data stewards, analysts, and executives.
2. **Sources of Inaccuracy** – The book categorizes error sources into measurement error, transcription error, and transformation error. Understanding these origins helps teams design targeted **data validation** rules.
3. **Quantifying Accuracy** – Olson introduces metrics such as *error rate* and *mean absolute error* that are still used in modern **data profiling** tools.
4. **Cost‑Benefit Analysis** – He stresses that improving accuracy should be guided by a cost‑benefit framework—invest where inaccurate data directly harms revenue, compliance, or safety.

These principles echo loudly in contemporary **data management** frameworks like DAMA‑DMBoK and **data quality assessment** methodologies.

### Applying Olson’s Wisdom to Modern Data Environments

Even though the book predates cloud data warehouses and AI‑driven data pipelines, its guidance translates seamlessly:

– **Automated Validation Rules** – Use modern ETL/ELT platforms to embed Olson‑style validation checks at the point of ingestion.
– **Reference Data Integration** – Cross‑reference incoming records against trusted master data sources to catch **data integrity** violations early.
– **Continuous Monitoring** – Deploy dashboards that track accuracy metrics (e.g., error rate per source) in real time, enabling rapid remediation.
– **Stakeholder Collaboration** – Foster a culture where business owners help define what “true value” means for each data element, aligning technical validation with business reality.

### The SEO Edge: Why “Data Accuracy” Is a Must‑Rank Keyword

If you’re crafting content around data quality, incorporating natural SEO keywords will boost visibility. Phrases such as **“data quality best practices,” “accuracy dimension,” “data governance framework,”** and **“how to improve data accuracy”** are highly searchable by professionals looking for actionable guidance. By weaving these terms organically—as we’ve done above—you’ll attract both technical audiences and decision‑makers seeking to elevate their **information quality** initiatives.

### Final Thoughts

Olson’s *Data Quality: The Accuracy Dimension* may have been published in 2003, but its core message—accurate data is non‑negotiable—resonates louder than ever. Whether you’re managing a legacy relational database or a real‑time streaming analytics platform, the principles of defining, measuring, and improving accuracy remain the same. Embrace Olson’s framework, combine it with modern **data profiling** tools, and you’ll build a foundation of trustworthy data that powers confident decision‑making across your organization.

*Ready to take your data quality program to the next level? Start by auditing your most critical data elements for accuracy today—because in the world of data, precision isn’t just a metric; it’s a competitive advantage.*

No Tags

25 total views, 2 today

  

Listing ID: N/A

Report problem

Processing your request, Please wait....

Sponsored Links

 

D. M. Bloomfield, S. H. Hohnloser, R. J. Cohen. (2002) Inter-pretation and ...

D. M. Bloomfield, S. H. Hohnloser, R. J. Cohen. (2002) Inter-pretation and classification of microvolt T-wave alternans tests. J Cardiovasc Electrophysiol, 13:502– 12. **D. M. […]

3 total views, 3 today

 

J. M. Smith, E. A. Clancy, C. R. Valeri, J. N. Ruskin, R. J. Cohen. (1988) ...

J. M. Smith, E. A. Clancy, C. R. Valeri, J. N. Ruskin, R. J. Cohen. (1988) Electricalalternans and cardiac electrical instabil-ity. Circulation, 77, 110– 21. […]

2 total views, 2 today

 

A. L. Ritzenberg, D. R. Adam, R. J. Cohen. (1984) Period multi-plying-evide...

A. L. Ritzenberg, D. R. Adam, R. J. Cohen. (1984) Period multi-plying-evidence for nonlinear behavior of the canine heart. Na-ture, 307, 159– 61. **A. L. […]

3 total views, 3 today

 

D. R. Adam, J. M. Smith, S. Akselrod, S. Nyberg, A. O. Powell, R. J. Cohen....

D. R. Adam, J. M. Smith, S. Akselrod, S. Nyberg, A. O. Powell, R. J. Cohen. (1984) Fluctuations in T-wave morphology and susceptibility to ventricular […]

3 total views, 3 today

 

B. D. Nearing, R. L. Verrier. (2002) Modified moving average method for T-w...

B. D. Nearing, R. L. Verrier. (2002) Modified moving average method for T-wave alternans analysis with high accuracy to pre-dict ventricular fibrillation. J Appl Physiol, […]

3 total views, 3 today

 

J. P. Martínez and S. Olmos, (2005) Methodological Principles of T Wave Alt...

J. P. Martínez and S. Olmos, (2005) Methodological Principles of T Wave Alternans Analysis: A Unified Framework. IEEE Transactions On Biomedical Engineering, vol. 52, NO. […]

3 total views, 3 today

 

J. P. Martinez, S. Olmos and P. Laguna, (2000) Simulation Study and Perform...

J. P. Martinez, S. Olmos and P. Laguna, (2000) Simulation Study and Performance Evaluation ofT-Wave Alternans Detec-tor. Proceedings of the 22nd Annual EMBS International Con-ference, […]

3 total views, 3 today

 

A. Bay& and J. Guindo, (1989) Sudden Cardiac Death. Spain: MCR.

A. Bay& and J. Guindo, (1989) Sudden Cardiac Death. Spain: MCR. None

3 total views, 3 today

 

N.G. Papadakis, C. D. Murrills, L. D. Hall, et al. (2000) Mini-mal gradient...

N.G. Papadakis, C. D. Murrills, L. D. Hall, et al. (2000) Mini-mal gradient encoding for robust estimation of diffusion anisot-ropy. Magn Reson Imaging, 18, 671–679. […]

2 total views, 2 today

 

D.K. Jones, M.A. Horsfield. (1999) A. Simmons. Optimal strategies for measu...

D.K. Jones, M.A. Horsfield. (1999) A. Simmons. Optimal strategies for measuring diffusion in anisotropic systems by magnetic resonance imaging. Magn. Reson. Med, 42 (3), 515–525. […]

2 total views, 2 today

 

D. M. Bloomfield, S. H. Hohnloser, R. J. Cohen. (2002) Inter-pretation and ...

D. M. Bloomfield, S. H. Hohnloser, R. J. Cohen. (2002) Inter-pretation and classification of microvolt T-wave alternans tests. J Cardiovasc Electrophysiol, 13:502– 12. **D. M. […]

3 total views, 3 today

 

J. M. Smith, E. A. Clancy, C. R. Valeri, J. N. Ruskin, R. J. Cohen. (1988) ...

J. M. Smith, E. A. Clancy, C. R. Valeri, J. N. Ruskin, R. J. Cohen. (1988) Electricalalternans and cardiac electrical instabil-ity. Circulation, 77, 110– 21. […]

2 total views, 2 today

 

A. L. Ritzenberg, D. R. Adam, R. J. Cohen. (1984) Period multi-plying-evide...

A. L. Ritzenberg, D. R. Adam, R. J. Cohen. (1984) Period multi-plying-evidence for nonlinear behavior of the canine heart. Na-ture, 307, 159– 61. **A. L. […]

3 total views, 3 today

 

D. R. Adam, J. M. Smith, S. Akselrod, S. Nyberg, A. O. Powell, R. J. Cohen....

D. R. Adam, J. M. Smith, S. Akselrod, S. Nyberg, A. O. Powell, R. J. Cohen. (1984) Fluctuations in T-wave morphology and susceptibility to ventricular […]

3 total views, 3 today

 

B. D. Nearing, R. L. Verrier. (2002) Modified moving average method for T-w...

B. D. Nearing, R. L. Verrier. (2002) Modified moving average method for T-wave alternans analysis with high accuracy to pre-dict ventricular fibrillation. J Appl Physiol, […]

3 total views, 3 today

 

J. P. Martínez and S. Olmos, (2005) Methodological Principles of T Wave Alt...

J. P. Martínez and S. Olmos, (2005) Methodological Principles of T Wave Alternans Analysis: A Unified Framework. IEEE Transactions On Biomedical Engineering, vol. 52, NO. […]

3 total views, 3 today

 

J. P. Martinez, S. Olmos and P. Laguna, (2000) Simulation Study and Perform...

J. P. Martinez, S. Olmos and P. Laguna, (2000) Simulation Study and Performance Evaluation ofT-Wave Alternans Detec-tor. Proceedings of the 22nd Annual EMBS International Con-ference, […]

3 total views, 3 today

 

A. Bay& and J. Guindo, (1989) Sudden Cardiac Death. Spain: MCR.

A. Bay& and J. Guindo, (1989) Sudden Cardiac Death. Spain: MCR. None

3 total views, 3 today

 

N.G. Papadakis, C. D. Murrills, L. D. Hall, et al. (2000) Mini-mal gradient...

N.G. Papadakis, C. D. Murrills, L. D. Hall, et al. (2000) Mini-mal gradient encoding for robust estimation of diffusion anisot-ropy. Magn Reson Imaging, 18, 671–679. […]

2 total views, 2 today

 

D.K. Jones, M.A. Horsfield. (1999) A. Simmons. Optimal strategies for measu...

D.K. Jones, M.A. Horsfield. (1999) A. Simmons. Optimal strategies for measuring diffusion in anisotropic systems by magnetic resonance imaging. Magn. Reson. Med, 42 (3), 515–525. […]

2 total views, 2 today