syöteupotuksiin
Syöteupotuksiin, often translated as "feed embeddings" in English, refers to the process of representing input data, such as text or other features, as dense numerical vectors. This technique is a cornerstone of modern machine learning, particularly in natural language processing (NLP) and recommendation systems. The primary goal of syöteupotuksiin is to capture semantic relationships and contextual information within the data, transforming discrete or high-dimensional inputs into a lower-dimensional, continuous space.
In NLP, syöteupotuksiin techniques like Word2Vec, GloVe, and FastText learn vector representations for words. These embeddings
Beyond text, syöteupotuksiin is also applied to other data types. In recommendation systems, user and item preferences