The rise of data mining and machine learning use in many applications has brought new challenges related to classification. Here, we deal with the following challenge: how to interpret and understand the reason behind a classifier's prediction. Indeed, understanding the behaviour of a classifier is widely recognized as a very important task for wide and safe adoption of machine learning and data mining technologies, especially in high-risk domains, and in dealing with bias.We present a preliminary work on a proposal of using the Ontology-Based Data Management paradigm for explaining the behavior of a classifier in terms of the concepts and the relations that are meaningful in the domain that is relevant for the classifier
Feature construction and selection are two key factors in the field of machine learning (ML). Usuall...
We describe the Data Mining OPtimization Ontology (DMOP), which was developed to support informed de...
Data Mining is being increasingly used in the field of automation of decision making processes, whic...
This dissertation attempts to address the changing needs of data science and analytics: making it ea...
Many applications of data-driven knowledge discovery processes call for the exploration of data from...
We study the task of explaining machine learning classifiers. We explore a symbolic approach to this...
An ontology is a shared conceptualization of some problem domain, usually consisting of concepts, in...
In the Semantic Web vision of the World Wide Web, content will not only be accessible to humans but...
We argue that in a distributed context, such as the Semantic Web, ontology engineers and data creato...
Semantic Data Mining alludes to the information mining assignments that deliberately consolidate are...
Machine Learning models are increasingly used to assist or replace humans in a variety of decision-m...
Recently, data mining has been deemed to be an effective means for disclosing evidences and hidden ...
The Semantic Web enables people and computers to interact and exchange information. Based on Semanti...
At the same time of information age, digital revolution has made necessary using some of technologie...
In practical data analysis, the understandability of models plays an important role in their accepta...
Feature construction and selection are two key factors in the field of machine learning (ML). Usuall...
We describe the Data Mining OPtimization Ontology (DMOP), which was developed to support informed de...
Data Mining is being increasingly used in the field of automation of decision making processes, whic...
This dissertation attempts to address the changing needs of data science and analytics: making it ea...
Many applications of data-driven knowledge discovery processes call for the exploration of data from...
We study the task of explaining machine learning classifiers. We explore a symbolic approach to this...
An ontology is a shared conceptualization of some problem domain, usually consisting of concepts, in...
In the Semantic Web vision of the World Wide Web, content will not only be accessible to humans but...
We argue that in a distributed context, such as the Semantic Web, ontology engineers and data creato...
Semantic Data Mining alludes to the information mining assignments that deliberately consolidate are...
Machine Learning models are increasingly used to assist or replace humans in a variety of decision-m...
Recently, data mining has been deemed to be an effective means for disclosing evidences and hidden ...
The Semantic Web enables people and computers to interact and exchange information. Based on Semanti...
At the same time of information age, digital revolution has made necessary using some of technologie...
In practical data analysis, the understandability of models plays an important role in their accepta...
Feature construction and selection are two key factors in the field of machine learning (ML). Usuall...
We describe the Data Mining OPtimization Ontology (DMOP), which was developed to support informed de...
Data Mining is being increasingly used in the field of automation of decision making processes, whic...