Knowledge Discovery using Unsupervised Cognition
Knowledge Discovery using Unsupervised Cognition
Knowledge discovery is key to understand and interpret a dataset, as well as to find the underlying relationships between its components. Unsupervised Cognition is a novel unsupervised learning algorithm that focus on modelling the learned data. This paper presents three techniques to perform knowledge discovery over an already trained Unsupervised Cognition model. Specifically, we present a technique for pattern mining, a technique for feature selection based on the previous pattern mining technique, and a technique for dimensionality reduction based on the previous feature selection technique. The final goal is to distinguish between relevant and irrelevant features and use them to build a model from which to extract meaningful patterns. We evaluated our proposals with empirical experiments and found that they overcome the state-of-the-art in knowledge discovery.
Alfredo Ibias、Hector Antona、Enric Guinovart、Guillem Ramirez-Miranda
计算技术、计算机技术
Alfredo Ibias,Hector Antona,Enric Guinovart,Guillem Ramirez-Miranda.Knowledge Discovery using Unsupervised Cognition[EB/OL].(2024-09-30)[2025-08-02].https://arxiv.org/abs/2409.20064.点此复制
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