TY - JOUR
T1 - S3Mining
T2 - A model-driven engineering approach for supporting novice data miners in selecting suitable classifiers
AU - Espinosa, Roberto
AU - García-Saiz, Diego
AU - Zorrilla, Marta
AU - Zubcoff, José Jacobo
AU - Mazón, Jose Norberto
N1 - Publisher Copyright:
© 2019 Elsevier B.V.
PY - 2019/7
Y1 - 2019/7
N2 - Data mining has proven to be very useful in order to extract information from data in many different contexts. However, due to the complexity of data mining techniques, it is required the know-how of an expert in this field to select and use them. Actually, adequately applying data mining is out of the reach of novice users which have expertise in their area of work, but lack skills to employ these techniques. In this paper, we use both model-driven engineering and scientific workflow standards and tools in order to develop named S3Mining framework, which supports novice users in the process of selecting the data mining classification algorithm that better fits with their data and goal. To this aim, this selection process uses the past experiences of expert data miners with the application of classification techniques over their own datasets. The contributions of our S3Mining framework are as follows: (i)an approach to create a knowledge base which stores the past experiences of experts users, (ii)a process that provides the expert users with utilities for the construction of classifiers’ recommenders based on the existing knowledge base, (iii)a system that allows novice data miners to use these recommenders for discovering the classifiers that better fit for solving their problem at hand, and (iv)a public implementation of the framework's workflows. Finally, an experimental evaluation has been conducted to shown the feasibility of our framework.
AB - Data mining has proven to be very useful in order to extract information from data in many different contexts. However, due to the complexity of data mining techniques, it is required the know-how of an expert in this field to select and use them. Actually, adequately applying data mining is out of the reach of novice users which have expertise in their area of work, but lack skills to employ these techniques. In this paper, we use both model-driven engineering and scientific workflow standards and tools in order to develop named S3Mining framework, which supports novice users in the process of selecting the data mining classification algorithm that better fits with their data and goal. To this aim, this selection process uses the past experiences of expert data miners with the application of classification techniques over their own datasets. The contributions of our S3Mining framework are as follows: (i)an approach to create a knowledge base which stores the past experiences of experts users, (ii)a process that provides the expert users with utilities for the construction of classifiers’ recommenders based on the existing knowledge base, (iii)a system that allows novice data miners to use these recommenders for discovering the classifiers that better fit for solving their problem at hand, and (iv)a public implementation of the framework's workflows. Finally, an experimental evaluation has been conducted to shown the feasibility of our framework.
KW - Data mining
KW - Knowledge base
KW - Meta-learning
KW - Model-driven
KW - Model-driven engineering
KW - Novice data miners
UR - https://www.scopus.com/pages/publications/85063423873
U2 - 10.1016/j.csi.2019.03.004
DO - 10.1016/j.csi.2019.03.004
M3 - Article
AN - SCOPUS:85063423873
SN - 0920-5489
VL - 65
SP - 143
EP - 158
JO - Computer Standards and Interfaces
JF - Computer Standards and Interfaces
ER -