2023
DOI: 10.33166/aetic.2023.01.005
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The Theory of Probabilistic Hierarchical Learning for Classification

Abstract: Providing the ability of classification to computers has remained at the core of the faculty of artificial intelligence. Its application has now made inroads towards nearly every walk of life, spreading over healthcare, education, defence, economics, linguistics, sociology, literature, transportation, agriculture, and industry etc. To our understanding most of the problems faced by us can be formulated as classification problems. Therefore, any novel contribution in this area has a great potential of applicati… Show more

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