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What is Cascade Generalization

Encyclopedia of Information Science and Technology, Second Edition
It uses the set of classifiers sequentially, at each step performing an extension of the original data by the insertion of new attributes.
Published in Chapter:
Increasing the Accuracy of Predictive Algorithms: A Review of Ensembles of Classifiers
Sotiris Kotsiantis (University of Patras, Greece & University of Peloponnese, Greece), Dimitris Kanellopoulos (University of Patras, Greece), and Panayotis Pintelas (University of Patras, Greece & University of Peloponnese, Greece)
DOI: 10.4018/978-1-60566-026-4.ch300
Abstract
In classification learning, the learning scheme is presented with a set of classified examples from which it is expected tone can learn a way of classifying unseen examples (see Table 1). Formally, the problem can be stated as follows: Given training data {(x1, y1)…(xn, yn)}, produce a classifier h: X- >Y that maps an object x ? X to its classification label y ? Y. A large number of classification techniques have been developed based on artificial intelligence (logic-based techniques, perception-based techniques) and statistics (Bayesian networks, instance-based techniques). No single learning algorithm can uniformly outperform other algorithms over all data sets. The concept of combining classifiers is proposed as a new direction for the improvement of the performance of individual machine learning algorithms. Numerous methods have been suggested for the creation of ensembles of classi- fiers (Dietterich, 2000). Although, or perhaps because, many methods of ensemble creation have been proposed, there is as yet no clear picture of which method is best.
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