2018
DOI: 10.3991/ijet.v13i03.8373
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Computer English Speech Independent Evaluation System of the Fusion Discrimination Training Algorithm

Abstract: This paper proposes a discriminative training algorithm for autonomous speech evaluation of computer English. Firstly, the mathematical expression of discriminative training algorithm is defined, and the conditions of using the algorithm are deduced. To facilitate the discriminant training algorithm calculation, through the parameter usage and frequency to calculate the algorithm, thus simplifying the discriminative training algorithm for English speech evaluation method. Experimental results show that the pro… Show more

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Cited by 2 publications
(2 citation statements)
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“…Oneofthemachinelearningdirectionsiscalleddeeplearning,makingitclosetoartificialintelligence (Jin, 2018;Kang et al, 2018;Yang, 2021). TheMCEcriterionwasproposedbyKatagiriandJuang (Juang&Katagiri,1992).Itisdifferent fromotherdiscriminanttrainingcriteria.TheMCEcriteriaintroducethesigmoidfunctionintothe objectivefunctionanduseGeneralizedProbabilityDescent(GPD)tomaximizetheobjectivefunction.…”
Section: Deep Learning Distinguishes Training Algorithmsmentioning
confidence: 99%
“…Oneofthemachinelearningdirectionsiscalleddeeplearning,makingitclosetoartificialintelligence (Jin, 2018;Kang et al, 2018;Yang, 2021). TheMCEcriterionwasproposedbyKatagiriandJuang (Juang&Katagiri,1992).Itisdifferent fromotherdiscriminanttrainingcriteria.TheMCEcriteriaintroducethesigmoidfunctionintothe objectivefunctionanduseGeneralizedProbabilityDescent(GPD)tomaximizetheobjectivefunction.…”
Section: Deep Learning Distinguishes Training Algorithmsmentioning
confidence: 99%
“…Learning analytics involves the use of supervised or non-supervised statistical learning or optimization tools in creating and discerning latent patterns or making predictions on data. Evolutionary computational methods, statistical learning methods and other algorithms have been applied in this context, examples include; instructional scheduling using annealing memetic algorithm [1], course scheduling using improved adaptive genetic algorithm [2], speech evaluation system [3] and interactive e learning evaluation [4]. Other works can be consulted [5][6][7][8][9][10][11].…”
Section: Introductionmentioning
confidence: 99%