Nonparametric classification models, such as K-Nearest Neighbor (KNN), have become particularly powerful tools in machine learning and data mining, due to their simplicity and flexibility. However, the testing time of the KNN classifier becomes unacceptable and the KNN's performance deteriorates significantly when applied to data sets with millions of dimensions. We observe that state-of-the-art approximate nearest neighbor (ANN) methods aim to either reduce the number of distance comparisons based on tree structure or decrease the cost of distance computation by dimension reduction methods. In this paper, we propose a doubly approximate nearest neighbor classification strategy, which marries the two branches which compress the dimensions f...
We show how to learn aMahanalobis distance metric for k-nearest neigh-bor (kNN) classification by se...
Fast and approximate nearest-neighbor search methods have recently become popular for scaling nonpar...
For many computer vision and machine learning problems, large training sets are key for good perform...
Copyright © 2018, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
In this paper, we propose a coarse to fine K nearest neighbor (KNN) classifier (CFKNNC). CFKNNC diff...
Abstract. One of the most widely used models for large-scale data mining is the k-nearest neighbor (...
Metric learning has been shown to significantly improve the accuracy of k-nearest neighbor (kNN) cla...
We consider improving the performance of k-Nearest Neighbor classifiers. A reg-ularized kNN is propo...
For many computer vision and machine learning problems, large training sets are key for good perform...
K nearest neighbors (KNN) are known as one of the simplest nonparametric classifiers but in high dim...
Nearest Neighbour Search (NNS) is one of the top ten data mining algorithms. It is simple and effect...
In many computer vision problems, answering the nearest neighbor queries efficiently, especially in ...
Demands for minimum parameter setup in machine learning models are desirable to avoid time-consuming...
Many computer vision tasks such as large-scale image retrieval and nearest-neighbor classification p...
In this thesis, we develop methods for constructing an A-weighted metric (x - y)' A( x - y) that im...
We show how to learn aMahanalobis distance metric for k-nearest neigh-bor (kNN) classification by se...
Fast and approximate nearest-neighbor search methods have recently become popular for scaling nonpar...
For many computer vision and machine learning problems, large training sets are key for good perform...
Copyright © 2018, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
In this paper, we propose a coarse to fine K nearest neighbor (KNN) classifier (CFKNNC). CFKNNC diff...
Abstract. One of the most widely used models for large-scale data mining is the k-nearest neighbor (...
Metric learning has been shown to significantly improve the accuracy of k-nearest neighbor (kNN) cla...
We consider improving the performance of k-Nearest Neighbor classifiers. A reg-ularized kNN is propo...
For many computer vision and machine learning problems, large training sets are key for good perform...
K nearest neighbors (KNN) are known as one of the simplest nonparametric classifiers but in high dim...
Nearest Neighbour Search (NNS) is one of the top ten data mining algorithms. It is simple and effect...
In many computer vision problems, answering the nearest neighbor queries efficiently, especially in ...
Demands for minimum parameter setup in machine learning models are desirable to avoid time-consuming...
Many computer vision tasks such as large-scale image retrieval and nearest-neighbor classification p...
In this thesis, we develop methods for constructing an A-weighted metric (x - y)' A( x - y) that im...
We show how to learn aMahanalobis distance metric for k-nearest neigh-bor (kNN) classification by se...
Fast and approximate nearest-neighbor search methods have recently become popular for scaling nonpar...
For many computer vision and machine learning problems, large training sets are key for good perform...