Lazy local learning methods train a classifier “on the fly ” at test time, using only a subset of the training instances that are most relevant to the novel test example. The goal is to tailor the classifier to the properties of the data surrounding the test example. Existing methods assume that the instances most useful for building the local model are strictly those closest to the test example. However, this fails to account for the fact that the success of the resulting classifier depends on the full distribution of selected training instances. Rather than simply gathering the test example’s nearest neighbors, we propose to predict the subset of training data that is jointly relevant to training its local model. We develop an approach to...
The objective in extreme multi-label learning is to train a classifier that can automatically tag a ...
A local distance measure for the nearest neighbor classification rule is shown to achieve high comp...
We consider the problem of learning a local metric to enhance the performance of nearest neighbor cl...
Lazy local learning methods train a classifier “on the fly ” at test time, using only a subset of th...
In this paper, we propose lazy bagging (LB), which builds bootstrap replicate bags based on the char...
Lazy learning is a memory-based technique that, once a query is received, extracts a prediction inte...
Lazy learning is a memory-based technique that, once a query is received, extracts a prediction inte...
In many machine learning applications data is assumed to be locally simple, where examples near each...
Lazy learning is a memory-based technique that, once a query is received, extracts a prediction inte...
Although object recognition methods based on local learning can reasonably resolve the difficulties ...
In recent years there has been growing interest in recognition models using local image features for...
Next to prediction accuracy, the interpretability of models is one of the fundamental criteria for m...
Lazy learning is a memory-based technique that, once a query is received, extracts a prediction inte...
In many domains, collecting sufficient labeled training data for supervised machine learning require...
Deep learning has been proven to be effective for classification problems. However, the majority of ...
The objective in extreme multi-label learning is to train a classifier that can automatically tag a ...
A local distance measure for the nearest neighbor classification rule is shown to achieve high comp...
We consider the problem of learning a local metric to enhance the performance of nearest neighbor cl...
Lazy local learning methods train a classifier “on the fly ” at test time, using only a subset of th...
In this paper, we propose lazy bagging (LB), which builds bootstrap replicate bags based on the char...
Lazy learning is a memory-based technique that, once a query is received, extracts a prediction inte...
Lazy learning is a memory-based technique that, once a query is received, extracts a prediction inte...
In many machine learning applications data is assumed to be locally simple, where examples near each...
Lazy learning is a memory-based technique that, once a query is received, extracts a prediction inte...
Although object recognition methods based on local learning can reasonably resolve the difficulties ...
In recent years there has been growing interest in recognition models using local image features for...
Next to prediction accuracy, the interpretability of models is one of the fundamental criteria for m...
Lazy learning is a memory-based technique that, once a query is received, extracts a prediction inte...
In many domains, collecting sufficient labeled training data for supervised machine learning require...
Deep learning has been proven to be effective for classification problems. However, the majority of ...
The objective in extreme multi-label learning is to train a classifier that can automatically tag a ...
A local distance measure for the nearest neighbor classification rule is shown to achieve high comp...
We consider the problem of learning a local metric to enhance the performance of nearest neighbor cl...