Rough set for quantitative analysis of characteristic information in metallogenic prediction

Autor: Yanbin Yuan, Ya‐qiong Zhu, You Zhou, Nils Roar Sælthun, Jiejun Huang, Wei Cui
Rok vydání: 2009
Předmět:
Zdroj: Kybernetes. 38:1801-1811
ISSN: 0368-492X
Popis: PurposeThe purpose of this paper is to extract the characterized mineralization information from large numbers of data obtained from geologic exploration based on rough set; analyze the inherent relation between mineral information genes and metallogenic probability, and offer the scientific basis for target prediction.Design/methodology/approachMineral information includes all kinds of relative metallogenic information. In order to extract comprehensive metallogenic prediction information, it is necessary to filter initial observation information to emphasize the factors that are most advantageous to metallogenic prognosis. Rough set can delete irrespective or unimportant attributes on the premises of no information missing and no classification ability changing, without supplementary information or prior knowledge, which has important theoretic and practical value for metallogenic prognosis.FindingsThe association and importance of geological information referring to prospecting are found out through attribute reduction based on rough set.Originality/valueThe analysis of geological and mineral information based on rough set is a novel approach for high‐dimensional complex non‐deterministic polynomial problems which are predominant in geological research. The research successfully extracts characterized mineralization information to offer the scientific basis for target prediction.
Databáze: OpenAIRE