. "2"^^ . . "Ostrava" . . "2"^^ . "Z(MSM 143300003)" . "Star\u00E1 Lesn\u00E1" . . . "ranking; text categorization; k-NN"@en . . . . "Mining Relevant Text Documents Using Ranking-Based k-NN Algorithms Trained by Only Positive Examples" . "Vysok\u00E1 \u0161kola b\u00E1\u0148sk\u00E1 - Technick\u00E1 univerzita Ostrava" . "[588F791269EC]" . "80-248-0755-6" . . "\u017Di\u017Eka, Jan" . "Mining Relevant Text Documents Using Ranking-Based k-NN Algorithms Trained by Only Positive Examples"@en . . "Hroza, Ji\u0159\u00ED" . "RIV/00216224:14330/05:00013631" . "RIV/00216224:14330/05:00013631!RIV10-MSM-14330___" . "The problem of mining relevant information from large numbers of unstructured text documents is often handled with various machine learning algorithms trained using both positive and negative examples that were prepared by an expert in a~given specific domain. However, when just positive examples are available, the task requires algorithms adapted to the different situation. A~modified k-nearest neighbors algorithm, trained using only positive examples, can classify by way of ranking unlabeled instances depending on their similarity to training examples. This procedure provides a~significant part of unlabeled positive instances with high precision. The main objective is to find a~method for mining relevant documents from large volumes (hundreds or thousands) of similar medical text files."@en . . "Mining Relevant Text Documents Using Ranking-Based k-NN Algorithms Trained by Only Positive Examples" . . "12"^^ . . . "530366" . . "The problem of mining relevant information from large numbers of unstructured text documents is often handled with various machine learning algorithms trained using both positive and negative examples that were prepared by an expert in a~given specific domain. However, when just positive examples are available, the task requires algorithms adapted to the different situation. A~modified k-nearest neighbors algorithm, trained using only positive examples, can classify by way of ranking unlabeled instances depending on their similarity to training examples. This procedure provides a~significant part of unlabeled positive instances with high precision. The main objective is to find a~method for mining relevant documents from large volumes (hundreds or thousands) of similar medical text files." . "2005-02-09+01:00"^^ . "Mining Relevant Text Documents Using Ranking-Based k-NN Algorithms Trained by Only Positive Examples"@en . . . "14330" . "Znalosti 2005, sborn\u00EDk p\u0159\u00EDsp\u011Bvk\u016F" .