Determining the optimal amount of training data for machine learning algorithms is a critical task in achieving successful and accurate models. This abstract delves into the research surrounding this question and provides insights into the factors that affect the quantity of training data required for effective machine learning. It explores the delicate balance between data quality and quantity, the concept of over fitting, and the importance of representative and diverse datasets. Additionally, it discusses the various techniques and approaches used to estimate the minimum training data required for achieving desirable performance. By understanding the implications of training data size on model performance, researchers and practitioners c...
ML systems contend with an ever-growing processing load of physical world data. These systems are ...
Collecting and labeling of good balanced training data are usually very difficult and challenging un...
Abstract: Machine Learning generates programs that make predictions and informed decisions about com...
Machine learning (ML), a computational self-learning platform, is expected to be applied in a variet...
Recent world events in go games between human and artificial intelligence called AlphaGo showed the ...
Applying machine learning to real problems is non-trivial because many important steps are needed to...
This thesis explores one of the most fundamental questions in Machine Learning, namely, how should t...
The quality and quantity (we call it suitability from now on) of data that are used for a machine le...
Classification is a well-studied problem in machine learning and data mining. Classifier performance...
Machine learning algorithms are used to train the machine to learn on its own and improve from exper...
Due to the prevalence of machine learning algorithms and the potential for their decisions to profou...
Abstract. We propose a novel approach for the estimation of the size of training sets that are neede...
suggests a reasonable line of research: find algorithms that can search the hypothesis class better....
We study a novel machine learning (ML) problem setting of sequentially allocating small subsets of t...
The last several years have seen the emergence of datasets of an unprecedented scale, and solving va...
ML systems contend with an ever-growing processing load of physical world data. These systems are ...
Collecting and labeling of good balanced training data are usually very difficult and challenging un...
Abstract: Machine Learning generates programs that make predictions and informed decisions about com...
Machine learning (ML), a computational self-learning platform, is expected to be applied in a variet...
Recent world events in go games between human and artificial intelligence called AlphaGo showed the ...
Applying machine learning to real problems is non-trivial because many important steps are needed to...
This thesis explores one of the most fundamental questions in Machine Learning, namely, how should t...
The quality and quantity (we call it suitability from now on) of data that are used for a machine le...
Classification is a well-studied problem in machine learning and data mining. Classifier performance...
Machine learning algorithms are used to train the machine to learn on its own and improve from exper...
Due to the prevalence of machine learning algorithms and the potential for their decisions to profou...
Abstract. We propose a novel approach for the estimation of the size of training sets that are neede...
suggests a reasonable line of research: find algorithms that can search the hypothesis class better....
We study a novel machine learning (ML) problem setting of sequentially allocating small subsets of t...
The last several years have seen the emergence of datasets of an unprecedented scale, and solving va...
ML systems contend with an ever-growing processing load of physical world data. These systems are ...
Collecting and labeling of good balanced training data are usually very difficult and challenging un...
Abstract: Machine Learning generates programs that make predictions and informed decisions about com...