Open Access Open Access  Restricted Access Subscription Access
Open Access Open Access Open Access  Restricted Access Restricted Access Subscription Access

A Modeling Approach for Datamining and Predictive Modeling Decision Tree Ensembles


Affiliations
1 Computer Science Department, Kamalam College of Arts and Science, Kedimedu, India
2 PG Department of Computer Science, Sree Saraswathi Thyagaraja College, Thippampatti, India
     

   Subscribe/Renew Journal


The data-mining classification and predictive modeling algorithms that are based on bootstrapping techniques re-use a source data set, repeatedly, to create a family of predictive and classification models that can be said to render a "holographic" view of the modeled data. The results offer a classification and prediction performance that is superior to single-model approaches. These holographic approaches are applied in an industrial setting that involves text mining warranty claims at a major international car, truck, and heavy equipment manufacturer. This paper explains the methods used, how they work, and how they perform in the text-mining area as applied to warranty claims. Combined text and quantitative data models are developed, tested, and validated in order to address the goal of achieving "better-than-human" classification performance on warranty claims.

Keywords

Bootstrap, Classification, Holographic, Predictive, Text Mining.
User
Subscription Login to verify subscription
Notifications
Font Size

Abstract Views: 289

PDF Views: 2




  • A Modeling Approach for Datamining and Predictive Modeling Decision Tree Ensembles

Abstract Views: 289  |  PDF Views: 2

Authors

N. Poongodi
Computer Science Department, Kamalam College of Arts and Science, Kedimedu, India
B. Firdaus Begam
PG Department of Computer Science, Sree Saraswathi Thyagaraja College, Thippampatti, India

Abstract


The data-mining classification and predictive modeling algorithms that are based on bootstrapping techniques re-use a source data set, repeatedly, to create a family of predictive and classification models that can be said to render a "holographic" view of the modeled data. The results offer a classification and prediction performance that is superior to single-model approaches. These holographic approaches are applied in an industrial setting that involves text mining warranty claims at a major international car, truck, and heavy equipment manufacturer. This paper explains the methods used, how they work, and how they perform in the text-mining area as applied to warranty claims. Combined text and quantitative data models are developed, tested, and validated in order to address the goal of achieving "better-than-human" classification performance on warranty claims.

Keywords


Bootstrap, Classification, Holographic, Predictive, Text Mining.