Word Prediction Using a Neural Net
نویسنده
چکیده
A neural network model of word prediction based on automatically derived corpus-based term vectors is proposed as a replacement for the standard n-gram model. Initial testing and evaluation show the technique is promising, but more rigorous evaluation techniques are needed.
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