We propose that pseudometric, a subadditive distance measure, has sufficient properties to be a good structure to perform nearest neighbor pattern classification. There exist some theoretical results that asymptotically guarantee the classification accuracy of k-nearest neighbor when the sample size grows larger. These results hold true under the assumption that the distance measure is a metric. The results still hold for pseudometrics up to some technicality. Whether the results are valid for the non-subadditive distance measures is still left unanswered. Pseudometric is also practically appealing. Once we have a subadditive distance measure, the measure will have at least one significant advantage over the non-subadditive; one can directl...
The use of distance metrics such as the Euclidean or Manhattan distance for nearest neighbour algori...
Perhaps the most straightforward classifier in the arsenal or Machine Learning techniques is the Nea...
Abstract. For classification of time series, the simple 1-nearest neighbor (1NN) classifier in combi...
To classify time series by nearest neighbors, we need to specify or learn one or several distance me...
Abstract To classify time series by nearest neighbors, we need to specify or learn one or several di...
The k-nearest neighbour (k-NN) classifier is one of the oldest and most important supervised learnin...
In this paper, we have evaluated some techniques for the time series classification problem. Many di...
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...
Abstract—Data mining research into time series classification (TSC) has focussed on alternative dist...
National Natural Science Foundation of China [61174161]; Specialized Research Fund for the Doctoral ...
When working with high dimensional data, it is often essential to calculate the difference or "dista...
This thesis is related to distance metric learning for kNN classification. We use the k nearest neig...
Many learning algorithms rely on distance metrics to receive their input data. Research has shown th...
Graduation date: 1995Distance-based algorithms are machine learning algorithms that classify queries...
The use of distance metrics such as the Euclidean or Manhattan distance for nearest neighbour algori...
Perhaps the most straightforward classifier in the arsenal or Machine Learning techniques is the Nea...
Abstract. For classification of time series, the simple 1-nearest neighbor (1NN) classifier in combi...
To classify time series by nearest neighbors, we need to specify or learn one or several distance me...
Abstract To classify time series by nearest neighbors, we need to specify or learn one or several di...
The k-nearest neighbour (k-NN) classifier is one of the oldest and most important supervised learnin...
In this paper, we have evaluated some techniques for the time series classification problem. Many di...
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...
Abstract—Data mining research into time series classification (TSC) has focussed on alternative dist...
National Natural Science Foundation of China [61174161]; Specialized Research Fund for the Doctoral ...
When working with high dimensional data, it is often essential to calculate the difference or "dista...
This thesis is related to distance metric learning for kNN classification. We use the k nearest neig...
Many learning algorithms rely on distance metrics to receive their input data. Research has shown th...
Graduation date: 1995Distance-based algorithms are machine learning algorithms that classify queries...
The use of distance metrics such as the Euclidean or Manhattan distance for nearest neighbour algori...
Perhaps the most straightforward classifier in the arsenal or Machine Learning techniques is the Nea...
Abstract. For classification of time series, the simple 1-nearest neighbor (1NN) classifier in combi...