Proximities are at the heart of almost all machine learning methods. In a more generic view, objects are compared by a (symmetric) similarity or dissimilarity measure, which may not obey particular mathematical properties. This renders many machine learning methods invalid, leading to convergence problems and the loss of generalization behavior. In many cases, the preferred dissimilarity measure is not metric. If the input data are non-vectorial, like text sequences, proximity-based learning is used or embedding techniques can be applied. Standard embeddings lead to the desired fixed-length vector encoding, but are costly and are limited in preserving the full information. As an information preserving alternative, we propose a complex-value...
Abstract. Huge and heterogeneous data sets, e.g. in the life science domain, are challenging for mos...
Zhu X, Schleif F-M, Hammer B. Semi-Supervised Vector Quantization for proximity data. In: Proceedin...
Abstract. Semi-supervised learning (SSL) is focused on learning from labeled and unlabeled data by i...
Proximities are at the heart of almost all machine learning methods. If the input data are given as ...
Proximities are at the heart of almost all machine learning methods. In a more generic view, objects...
Efficient learning of a data analysis task strongly depends on the data representation. Most methods...
Abstract. Proximity is the basic quality which identifies and characterizes groups of objects in var...
We provide a new linear program to deal with classification of data in the case of data given in ter...
We provide a new linear program to deal with classification of data in the case of functions written...
We provide a new linear program to deal with classification of data in the case of data given in ter...
Abstract—Proximity captures the degree of similarity between examples and is thereby fundamental in ...
Abstract—Proximity captures the degree of similarity between examples and is thereby fundamental in ...
The amount of digital data increases every year dramatically. The processing of these data requires ...
There are two common data representations in intelligent data analysis, namely the vectorial represe...
The amount of digital data increases every year dramatically. The processing of these data requires ...
Abstract. Huge and heterogeneous data sets, e.g. in the life science domain, are challenging for mos...
Zhu X, Schleif F-M, Hammer B. Semi-Supervised Vector Quantization for proximity data. In: Proceedin...
Abstract. Semi-supervised learning (SSL) is focused on learning from labeled and unlabeled data by i...
Proximities are at the heart of almost all machine learning methods. If the input data are given as ...
Proximities are at the heart of almost all machine learning methods. In a more generic view, objects...
Efficient learning of a data analysis task strongly depends on the data representation. Most methods...
Abstract. Proximity is the basic quality which identifies and characterizes groups of objects in var...
We provide a new linear program to deal with classification of data in the case of data given in ter...
We provide a new linear program to deal with classification of data in the case of functions written...
We provide a new linear program to deal with classification of data in the case of data given in ter...
Abstract—Proximity captures the degree of similarity between examples and is thereby fundamental in ...
Abstract—Proximity captures the degree of similarity between examples and is thereby fundamental in ...
The amount of digital data increases every year dramatically. The processing of these data requires ...
There are two common data representations in intelligent data analysis, namely the vectorial represe...
The amount of digital data increases every year dramatically. The processing of these data requires ...
Abstract. Huge and heterogeneous data sets, e.g. in the life science domain, are challenging for mos...
Zhu X, Schleif F-M, Hammer B. Semi-Supervised Vector Quantization for proximity data. In: Proceedin...
Abstract. Semi-supervised learning (SSL) is focused on learning from labeled and unlabeled data by i...