Deep learning (DL) models are trained on sampled data, where the distribution of training data differs from that of real-world data (i.e., the distribution shift), which reduces the model's robustness. Various testing techniques have been proposed, including distribution-unaware and distribution-aware methods. However, distribution-unaware testing lacks effectiveness by not explicitly considering the distribution of test cases and may generate redundant errors (within same distribution). Distribution-aware testing techniques primarily focus on generating test cases that follow the training distribution, missing out-of-distribution data that may also be valid and should be considered in the testing process. In this paper, we propose a novel ...
Having similar behavior at training time and test time $-$ what we call a "What You See Is What You ...
The performance of machine learning models under distribution shift has been the focus of the commun...
Deep Learning (DL) is having a transformational effect in critical areas such as finance, healthcare...
peer reviewedSimilar to traditional software that is constantly under evolution, deep neural network...
The performance decay experienced by deep neural networks (DNNs) when confronted with distributional...
With its growing use in safety/security-critical applications, Deep Learning (DL) has raised increas...
This is an artifact for reproducing experiments used in the below paper. S. Dola, M. B. Dwyer, and ...
Designing robust models is critical for reliable deployment of artificial intelligence systems. Deep...
This is an artifact for reproducing experiments in the below paper S. Dola, M. B. Dwyer, and M. L. ...
Despite superior performance in many situations, deep neural networks are often vulnerable to advers...
Deep learning (DL) training is nondeterministic and such nondeterminism was shown to cause significa...
Deep Learning (DL) systems are rapidly being adopted in safety and security critical domains, urgent...
Deep learning is increasingly applied to safety-critical application domains such as autonomous cars...
Recently, there has been a significant growth of interest in applying software engineering technique...
Testing deep learning-based systems is crucial but challenging due to the required time and labor fo...
Having similar behavior at training time and test time $-$ what we call a "What You See Is What You ...
The performance of machine learning models under distribution shift has been the focus of the commun...
Deep Learning (DL) is having a transformational effect in critical areas such as finance, healthcare...
peer reviewedSimilar to traditional software that is constantly under evolution, deep neural network...
The performance decay experienced by deep neural networks (DNNs) when confronted with distributional...
With its growing use in safety/security-critical applications, Deep Learning (DL) has raised increas...
This is an artifact for reproducing experiments used in the below paper. S. Dola, M. B. Dwyer, and ...
Designing robust models is critical for reliable deployment of artificial intelligence systems. Deep...
This is an artifact for reproducing experiments in the below paper S. Dola, M. B. Dwyer, and M. L. ...
Despite superior performance in many situations, deep neural networks are often vulnerable to advers...
Deep learning (DL) training is nondeterministic and such nondeterminism was shown to cause significa...
Deep Learning (DL) systems are rapidly being adopted in safety and security critical domains, urgent...
Deep learning is increasingly applied to safety-critical application domains such as autonomous cars...
Recently, there has been a significant growth of interest in applying software engineering technique...
Testing deep learning-based systems is crucial but challenging due to the required time and labor fo...
Having similar behavior at training time and test time $-$ what we call a "What You See Is What You ...
The performance of machine learning models under distribution shift has been the focus of the commun...
Deep Learning (DL) is having a transformational effect in critical areas such as finance, healthcare...