Diverse Ensemble Framework (DEF) for Predictive Analytics
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Thapar University
Abstract
Machine Learning technique has numerous benefits that include high flexibility and power,
lack of parametric assumption etc. Building an effective Machine Learning ensemble model,
by using different categories models to perform ensembling than the concept of diversity in
ensemble has occurs. To perform ensembling on the datasets the technique like bagging,
boosting, and voting are used. In this thesis we take the two datasets of regression data and
initially execute both the datasets on eight different machine learning models (RF, NN, LM,
Cubist, Enet, LR with SS, PCR and ICR), after performing ensemble techniques on the
following machine learning model we got the batter result as compare to individual results.
In classification problems, observations fall into pre-assigned groups. Examples include
identifying customers who would buy a product, and detecting whether a credit card expense
is made by a customer. A popular approach to tackle these problems is using a collection of
models that combines the collective knowledge of them. It has been shown that employing
multiple models outperforms a single model. A common approach has been to use the same
collection for all observations, which is also known as the static approach. Recently, there
have been more attempts in using a different collection that is more specialized for each
observation, depending on the features of observations.
In the ensemble result seen that the ensemble of two weak models (with minimum accuracy)
are gives the best results (with high accuracy) in the both the case of datasets. To make the
work more efficient we proposed a framework known as Diversity framework (DEF). The
proposed framework is also predicting the odor of the chemicals so it is known as olfaction
prediction. The framework DEF is developed using R language and various R packages. The
performance of DEF is evaluated and results show that DE framework out performs than
other existing techniques like Bagging, Boosting etc.
Description
Master of Engineering -Software Engineering
