parfrasgenerering
Parfrasgenerering, often called paraphrase generation, is the task of producing rewritten text that preserves the original meaning while altering wording and syntactic structure. It is used in natural language processing to diversify expression, adapt content for different audiences, or enable downstream tasks such as data augmentation and text simplification.
Modern approaches are predominantly neural. Encoder-decoder architectures, especially transformer-based models, are trained on parallel paraphrase data
Evaluation of paraphrase quality combines automatic and human assessments. Automatic metrics such as BLEU, ROUGE, and
Applications span data augmentation for natural language processing tasks, text simplification, style transfer, and content rewriting
Ethical and legal considerations address misuse, copyright concerns, and potential bias or harmful content. Responsible use