Bookbot

Semantic data mining

An Ontology-Based Approach

Meer over het boek

Ontologies are increasingly utilized for integrating and organizing data and knowledge in research and industry. This book focuses on semantic data mining, leveraging domain ontologies as background knowledge to mine insights from domain ontologies and knowledge graphs, beyond just empirical data. The introductory chapters lay the theoretical groundwork for data mining and ontology representation. It presents various methods for semantic data mining, tackling tasks like pattern mining, classification, and similarity-based approaches. The book addresses specific challenges in using ontologies for data mining, such as managing knowledge incompleteness and defining a truly “semantic” similarity measure. Several chapters illustrate applications of semantic data mining, ranging from scenarios that employ lightweight ontologies for knowledge graph enrichment to advanced cases involving intelligent knowledge discovery assistants that utilize complex domain ontologies for meta-mining. This ontology-based meta-learning approach enhances full data mining processes. The book is aimed at researchers in semantic technologies, knowledge engineering, data science, and data mining, as well as developers of knowledge-based systems and applications.

Een boek kopen

Semantic data mining, Agnieszka Ławrynowicz

Taal
Jaar van publicatie
2017
Zodra we het ontdekt hebben, sturen we een e-mail.

Betaalmethoden

Nog niemand heeft beoordeeld.Tarief

Titel
Semantic data mining
Ondertitel
An Ontology-Based Approach
Taal
Engels
Uitgever
AKA
Jaar van publicatie
2017
Aantal pagina's
194
ISBN10
3898387240
ISBN13
9783898387248
Reeks
Aantekening
Ontologies are increasingly utilized for integrating and organizing data and knowledge in research and industry. This book focuses on semantic data mining, leveraging domain ontologies as background knowledge to mine insights from domain ontologies and knowledge graphs, beyond just empirical data. The introductory chapters lay the theoretical groundwork for data mining and ontology representation. It presents various methods for semantic data mining, tackling tasks like pattern mining, classification, and similarity-based approaches. The book addresses specific challenges in using ontologies for data mining, such as managing knowledge incompleteness and defining a truly “semantic” similarity measure. Several chapters illustrate applications of semantic data mining, ranging from scenarios that employ lightweight ontologies for knowledge graph enrichment to advanced cases involving intelligent knowledge discovery assistants that utilize complex domain ontologies for meta-mining. This ontology-based meta-learning approach enhances full data mining processes. The book is aimed at researchers in semantic technologies, knowledge engineering, data science, and data mining, as well as developers of knowledge-based systems and applications.