NETtalk (artificial neural network)

NETtalk is an artificial neural network. It is the result of research carried out in the mid-1980s by Terrence Sejnowski and Charles Rosenberg. The intent behind NETtalk was to construct simplified models that might shed light on the complexity of learning human level cognitive tasks, and their implementation as a connectionist model that could also learn to perform a comparable task.

NETtalk is a program that learns to pronounce written English text by being shown text as input and matching phonetic transcriptions for comparison.

Achievements and limitations

NETtalk was created to explore the mechanisms of learning to correctly pronounce English text. The authors note that learning to read involves a complex mechanism involving many parts of the human brain. NETtalk does not specifically model the image processing stages and letter recognition of the visual cortex. Rather, it assumes that the letters have been pre-classified and recognized, and these letter sequences comprising words are then shown to the neural network during training and during performance testing. It is NETtalk's task to learn proper associations between the correct pronunciation with a given sequence of letters based on the context in which the letters appear. In other words, NETtalk learns to use the letters around the currently pronounced phoneme that provide cues as to its intended phonemic mapping.

gollark: People won't drop Facebook because they can send people alerts about them being egglocked.
gollark: Hardly.
gollark: You can probably trade it for another one.
gollark: Where's the border between "messaging" and "a thing to alert people that you're seeking offers"?
gollark: I guess they may just be waiting for other offers, though. TJ09, why not at least limited messaging (sending preset text)?


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