Academy & Industry Research Collaboration Center (AIRCC)

Volume 10, Number 12, October 2020

A Novel Index-based Multidimensional Data Organization Model that Enhances
the Predictability of the Machine Learning Algorithms

  Authors

Mahbubur Rahman, North American University, USA

  Abstract

Learning from the multidimensional data has been an interesting concept in the field of machine learning. However, such learning can be difficult, complex, expensive because of expensive data processing, manipulations as the number of dimension increases. As a result, we have introduced an ordered index-based data organization model as the ordered data set provides easy and efficient access than the unordered one and finally, such organization can improve the learning. The ordering maps the multidimensional dataset in the reduced space and ensures that the information associated with the learning can be retrieved back and forth efficiently. We have found that such multidimensional data storage can enhance the predictability for both the unsupervised and supervised machine learning algorithms.

  Keywords

Multidimensional, Euclidean norm, cosine similarity, database, model, hash table, index, Knearest neighbour, K-means clustering.