Many studies in machine learning try to investigate what makes an algorithm succeed or fail on certain datasets. However, the field is still evolving relatively quickly, and new algorithms, preprocessing methods, learning tasks and evaluation procedures continue to emerge in the literature. Thus, it is impossible for a single study to cover this expanding space of learning approaches. In this paper, we propose a community-based approach for the analysis of learning algorithms, driven by sharing meta-data from previous experiments in a uniform way. We illustrate how organizing this information in a central database can create a practical public platform for any kind of exploitation of meta-knowledge, allowing effective reuse of previous expe...
Abstract. Thousands of Machine Learning research papers contain ex-perimental comparisons that usual...
In this short paper, we present a student project run as part of the Machine Learning and Inductive ...
Machine learning research often has a large experimental component. While the experimental methodolo...
Many studies in machine learning try to investigate what makes an algorithm succeed or fail on certa...
Many studies in machine learning try to in-vestigate what makes an algorithm succeed or fail on cert...
Many studies in machine learning try to investigate what makes an algorithm succeed or fail on certa...
Thousands of machine learning research papers contain extensive experimental comparisons. However, t...
Next to running machine learning algorithms based on inductive queries, much can be learned by immed...
Gaining insights into the behavior of learning algorithms generally involves studying the performanc...
Research in machine learning and data mining can be speeded up tremendously by moving empirical rese...
Abstract. The results from most machine learning experiments are used for a specific purpose and the...
Thousands of machine learning research papers contain extensive experimental comparisons. However, t...
This paper proposes an ontology and a markup language to describe machine learning experiments in a ...
Thousands of machine learning research papers contain extensive experimental comparisons. However, t...
Thousands of Machine Learning research papers contain experimental comparisons that usually have bee...
Abstract. Thousands of Machine Learning research papers contain ex-perimental comparisons that usual...
In this short paper, we present a student project run as part of the Machine Learning and Inductive ...
Machine learning research often has a large experimental component. While the experimental methodolo...
Many studies in machine learning try to investigate what makes an algorithm succeed or fail on certa...
Many studies in machine learning try to in-vestigate what makes an algorithm succeed or fail on cert...
Many studies in machine learning try to investigate what makes an algorithm succeed or fail on certa...
Thousands of machine learning research papers contain extensive experimental comparisons. However, t...
Next to running machine learning algorithms based on inductive queries, much can be learned by immed...
Gaining insights into the behavior of learning algorithms generally involves studying the performanc...
Research in machine learning and data mining can be speeded up tremendously by moving empirical rese...
Abstract. The results from most machine learning experiments are used for a specific purpose and the...
Thousands of machine learning research papers contain extensive experimental comparisons. However, t...
This paper proposes an ontology and a markup language to describe machine learning experiments in a ...
Thousands of machine learning research papers contain extensive experimental comparisons. However, t...
Thousands of Machine Learning research papers contain experimental comparisons that usually have bee...
Abstract. Thousands of Machine Learning research papers contain ex-perimental comparisons that usual...
In this short paper, we present a student project run as part of the Machine Learning and Inductive ...
Machine learning research often has a large experimental component. While the experimental methodolo...