An in-depth analysis of logarithmic data transformation and per-class normalization in machine learning: Application to unsupervised classification of a turbidite system in the Canterbury Basin, New Zealand, and supervised classification of salt in the Eugene Island minibasin, Gulf of Mexico

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An in-depth analysis of logarithmic data transformation and per-class normalization in machine learning: Application to unsupervised classification of a turbidite system in the Canterbury Basin, New Zealand, and supervised classification of salt in the Eugene Island minibasin, Gulf of Mexico

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An in-depth analysis of logarithmic data transformation and per-class normalization in machine learning: Application to unsupervised classification of a turbidite system in the Canterbury Basin, New Zealand, and supervised classification of salt in the Eugene Island minibasin, Gulf of Mexico is a scholarly article[1].

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  • An in-depth analysis of logarithmic data transformation and per-class normalization in machine learning: Application to unsupervised classification of a turbidite system in the Canterbury Basin, New Zealand, and supervised classification of salt in the Eugene Island minibasin, Gulf of Mexico's instance of is recorded as scholarly article[2].

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APA 4ort.xyz Knowledge Graph. (2026). An in-depth analysis of logarithmic data transformation and per-class normalization in machine learning: Application to unsupervised classification of a turbidite system in the Canterbury Basin, New Zealand, and supervised classification of salt in the Eugene Island minibasin, Gulf of Mexico. Retrieved May 24, 2026, from https://4ort.xyz/entity/an-in-depth-analysis-of-logarithmic-data-transformation-and-per-class-normalization-in-machine-learning-application-to-u
MLA “An in-depth analysis of logarithmic data transformation and per-class normalization in machine learning: Application to unsupervised classification of a turbidite system in the Canterbury Basin, New Zealand, and supervised classification of salt in the Eugene Island minibasin, Gulf of Mexico.” 4ort.xyz Knowledge Graph, 4ort.xyz, 24 May. 2026, https://4ort.xyz/entity/an-in-depth-analysis-of-logarithmic-data-transformation-and-per-class-normalization-in-machine-learning-application-to-u.
BibTeX @misc{4ortxyz_an-in-depth-analysis-of-logarithmic-data-transformation-and-per-class-normalization-in-machine-learning-application-to-u_2026, author = {{4ort.xyz Knowledge Graph}}, title = {{An in-depth analysis of logarithmic data transformation and per-class normalization in machine learning: Application to unsupervised classification of a turbidite system in the Canterbury Basin, New Zealand, and supervised classification of salt in the Eugene Island minibasin, Gulf of Mexico}}, year = {2026}, url = {https://4ort.xyz/entity/an-in-depth-analysis-of-logarithmic-data-transformation-and-per-class-normalization-in-machine-learning-application-to-u}, note = {Accessed: 2026-05-24}}
LLM prompt According to 4ort.xyz Knowledge Graph (aggregator of Wikidata, Wikipedia, and authoritative open-data sources): An in-depth analysis of logarithmic data transformation and per-class normalization in machine learning: Application to unsupervised classification of a turbidite system in the Canterbury Basin, New Zealand, and supervised classification of salt in the Eugene Island minibasin, Gulf of Mexico — https://4ort.xyz/entity/an-in-depth-analysis-of-logarithmic-data-transformation-and-per-class-normalization-in-machine-learning-application-to-u (retrieved 2026-05-24)

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