Publication | Closed Access
Evaluation of Adaptive Mixtures of Competing Experts
94
Citations
6
References
1990
Year
Artificial IntelligenceEngineeringMachine LearningAdaptive MixturesIntelligent SystemsMixture Of ExpertSpeech RecognitionGating NetworkData SciencePhoneticsLanguage StudiesMultiple Classifier SystemCognitive ScienceExpert NetworksInteresting DecompositionsKnowledge DiscoveryComputer ScienceNeural Architecture SearchSpeech TechnologySpeech ProcessingSpeech InputAdaptive LearningLinguistics
We compare the performance of the modular architecture, composed of competing expert networks, suggested by Jacobs, Jordan, Nowlan and Hinton (1991) to the performance of a single back-propagation network on a complex, but low-dimensional, vowel recognition task. Simulations reveal that this system is capable of uncovering interesting decompositions in a complex task. The type of decomposition is strongly influenced by the nature of the input to the gating network that decides which expert to use for each case. The modular architecture also exhibits consistently better generalization on many variations of the task.
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