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Open AccessJournal ArticleDOI

Instance-Based Learning Algorithms

TLDR
This paper describes how storage requirements can be significantly reduced with, at most, minor sacrifices in learning rate and classification accuracy and extends the nearest neighbor algorithm, which has large storage requirements.
Abstract
Storing and using specific instances improves the performance of several supervised learning algorithms. These include algorithms that learn decision trees, classification rules, and distributed networks. However, no investigation has analyzed algorithms that use only specific instances to solve incremental learning tasks. In this paper, we describe a framework and methodology, called instance-based learning, that generates classification predictions using only specific instances. Instance-based learning algorithms do not maintain a set of abstractions derived from specific instances. This approach extends the nearest neighbor algorithm, which has large storage requirements. We describe how storage requirements can be significantly reduced with, at most, minor sacrifices in learning rate and classification accuracy. While the storage-reducing algorithm performs well on several real-world databases, its performance degrades rapidly with the level of attribute noise in training instances. Therefore, we extended it with a significance test to distinguish noisy instances. This extended algorithm's performance degrades gracefully with increasing noise levels and compares favorably with a noise-tolerant decision tree algorithm.

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Citations
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Journal ArticleDOI

The cost-minimizing inverse classification problem: a genetic algorithm approach

TL;DR: This work develops several genetic algorithms and develops a real genetic algorithm with feasibility control, a traditional binary genetic algorithm, and a steepest ascent hill climbing algorithm to investigate the inverse problem in classification systems.
Journal ArticleDOI

Dangerous driving behavior detection using video-extracted vehicle trajectory histograms

TL;DR: Based on the most representative trajectory histograms, the detection accuracy rate of dangerous driving behavior using PSO_SVM is superior to those of the most frequently used classifiers—Naïve Bayesian Classifier (NBC), k-Nearest Neighbor (kNN), and C4.5 decision tree.
Book ChapterDOI

A Modified Stacking Ensemble Machine Learning Algorithm Using Genetic Algorithms

TL;DR: Distributed data mining and ensemble learning looks at how data that is distributed can be effectively mined without having to collect the data at one central location and ensembles have been found to be more accurate than any of their single component classifiers.
Journal ArticleDOI

Combining similarity in time and space for training set formation under concept drift

TL;DR: A method for training set selection, particularly relevant when the expected drift is gradual, is developed, which shows the best accuracy in the peer group on the real and artificial drifting data.
Journal ArticleDOI

Negated bio-events: analysis and identification.

TL;DR: The first detailed study on the analysis and identification of negated bio-events is conducted, and a novel framework is proposed that can be integrated with state-of-the-art event extraction systems.
References
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Journal ArticleDOI

Induction of Decision Trees

J. R. Quinlan
- 25 Mar 1986 - 
TL;DR: In this paper, an approach to synthesizing decision trees that has been used in a variety of systems, and it describes one such system, ID3, in detail, is described, and a reported shortcoming of the basic algorithm is discussed.
Book

Classification and regression trees

Leo Breiman
TL;DR: The methodology used to construct tree structured rules is the focus of a monograph as mentioned in this paper, covering the use of trees as a data analysis method, and in a more mathematical framework, proving some of their fundamental properties.
Journal ArticleDOI

Nearest neighbor pattern classification

TL;DR: The nearest neighbor decision rule assigns to an unclassified sample point the classification of the nearest of a set of previously classified points, so it may be said that half the classification information in an infinite sample set is contained in the nearest neighbor.