attribútumkivonás
Attribútumkivonás, or attribute extraction, is a process in natural language processing (NLP) and information extraction that involves identifying and extracting specific attributes or properties from text. These attributes can be various types of information, such as named entities (e.g., people, organizations, locations), numerical values (e.g., dates, monetary amounts), or other relevant details that are crucial for understanding the content of the text.
The primary goal of attribútumkivonás is to transform unstructured text into structured data, making it easier
Attribute extraction can be performed using different methods, such as rule-based systems, machine learning algorithms, or
One of the challenges in attribútumkivonás is the variability of language and the context in which attributes
In summary, attribútumkivonás is a crucial task in NLP that enables the transformation of unstructured text