Classification is used in a wide range of applications to determine the class of a new element; for example, it can be used to determine whether an object is a pedestrian based on images captured by the safety sensors of a vehicle. Classifiers are commonly implemented using electronic components and thus, they are subject to errors in memories and combinational logic. In some cases, classifiers are used in safety critical applications and thus, they must operate reliably. Therefore, there is a need to protect classifiers against errors. The k Nearest Neighbors (kNNs) classifier is a simple, yet powerful algorithm that is widely used; its protection against errors in the neighbor computations has been recently studied. This paper considers t...
K nearest neighbors (KNN) are known as one of the simplest nonparametric classifiers but in high dim...
The goal of classification is to develop a model that can be used to accurately assign new observati...
The k Nearest Neighbors (kNN) method is a widely used technique to solve classification or regressio...
Classification is used in a wide range of applications to determine the class of a new element; for ...
Machine learning (ML) techniques such as classifiers are used in many applications, some of which ar...
This paper presents a series of PAC error bounds for k-nearest neighbors classifiers, with O(n− r 2r...
The k-nearest neighbors (kNN) classifier predicts a class of a query, q, by taking the majority clas...
If the software fails to perform its function, serious consequences may result. Software defect pred...
k nearest neighbor (kNN) is a simple and widely used classifier; it can achieve comparable performan...
In supervised learning, labeled data are provided as inputs and then learning is used to classify ne...
We study the certification of stability properties, such as robustness and individual fairness, of t...
With the proliferation of cyber-attacks, there is an increased interest among practitioners and in a...
In supervised learning, labeled data are provided as inputs and then learning is used to classify ne...
In this paper, a novel prototype reduction algorithm is proposed, which aims at reducing the storage...
Data driven classification models are useful to assess quality of manufactured electronics. Because ...
K nearest neighbors (KNN) are known as one of the simplest nonparametric classifiers but in high dim...
The goal of classification is to develop a model that can be used to accurately assign new observati...
The k Nearest Neighbors (kNN) method is a widely used technique to solve classification or regressio...
Classification is used in a wide range of applications to determine the class of a new element; for ...
Machine learning (ML) techniques such as classifiers are used in many applications, some of which ar...
This paper presents a series of PAC error bounds for k-nearest neighbors classifiers, with O(n− r 2r...
The k-nearest neighbors (kNN) classifier predicts a class of a query, q, by taking the majority clas...
If the software fails to perform its function, serious consequences may result. Software defect pred...
k nearest neighbor (kNN) is a simple and widely used classifier; it can achieve comparable performan...
In supervised learning, labeled data are provided as inputs and then learning is used to classify ne...
We study the certification of stability properties, such as robustness and individual fairness, of t...
With the proliferation of cyber-attacks, there is an increased interest among practitioners and in a...
In supervised learning, labeled data are provided as inputs and then learning is used to classify ne...
In this paper, a novel prototype reduction algorithm is proposed, which aims at reducing the storage...
Data driven classification models are useful to assess quality of manufactured electronics. Because ...
K nearest neighbors (KNN) are known as one of the simplest nonparametric classifiers but in high dim...
The goal of classification is to develop a model that can be used to accurately assign new observati...
The k Nearest Neighbors (kNN) method is a widely used technique to solve classification or regressio...