Data subsampling has become widely recognized as a tool to overcome computational and economic bottlenecks in analyzing massive datasets and measurement-constrained experiments. However, traditional subsampling methods often suffer from the lack of information available at the design stage. We propose an active sampling strategy that iterates between estimation and data collection with optimal subsamples, guided by machine learning predictions on yet unseen data. The method is illustrated on virtual simulation-based safety assessment of advanced driver assistance systems. Substantial performance improvements were observed compared to traditional sampling methods
A data gathering method based on active querying is described. In this method data is reduced to a m...
Often in the design process of an engineer, the design specifications of the system are not complete...
International audienceBig data processing is the new challenge for analytical, machine learning tech...
This thesis addresses a problem arising in large and expensive experiments where incomplete data com...
In modern statistical applications, we are often faced with situationswhere there is either too litt...
A common belief in unbiased active learning is that, in order to capture the most informative instan...
Active learning solves machine learning problems where acquiring labels for the data is costly. A re...
Running machine learning algorithms on large and rapidly growing volumes of data is often computatio...
Active learning is a machine learning technique in which a learning algorithm is able to interactive...
[[abstract]]Active learning is a kind of semi-supervised learning methods in which learning algorith...
This paper presents an active learning method that di-rectly optimizes expected future error. This i...
International audienceWe study active learning as a derandomized form of sampling. We show that full...
Design-consistent model-assisted estimation has become the standard practice in survey sampling. How...
Object classification by learning from data is a vast area of statistics and machine learning. Withi...
Subsampling a signal of interest can reduce costly data transfer, battery drain, radiation exposure ...
A data gathering method based on active querying is described. In this method data is reduced to a m...
Often in the design process of an engineer, the design specifications of the system are not complete...
International audienceBig data processing is the new challenge for analytical, machine learning tech...
This thesis addresses a problem arising in large and expensive experiments where incomplete data com...
In modern statistical applications, we are often faced with situationswhere there is either too litt...
A common belief in unbiased active learning is that, in order to capture the most informative instan...
Active learning solves machine learning problems where acquiring labels for the data is costly. A re...
Running machine learning algorithms on large and rapidly growing volumes of data is often computatio...
Active learning is a machine learning technique in which a learning algorithm is able to interactive...
[[abstract]]Active learning is a kind of semi-supervised learning methods in which learning algorith...
This paper presents an active learning method that di-rectly optimizes expected future error. This i...
International audienceWe study active learning as a derandomized form of sampling. We show that full...
Design-consistent model-assisted estimation has become the standard practice in survey sampling. How...
Object classification by learning from data is a vast area of statistics and machine learning. Withi...
Subsampling a signal of interest can reduce costly data transfer, battery drain, radiation exposure ...
A data gathering method based on active querying is described. In this method data is reduced to a m...
Often in the design process of an engineer, the design specifications of the system are not complete...
International audienceBig data processing is the new challenge for analytical, machine learning tech...