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A probabilistic stochastic model for analysis on the epileptic syndrome using speech synthesis and state space representation

机译:用语音合成和状态空间表示分析癫痫综合征分析的概率随机模型

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A probabilistic stochastic model deals with the real life applications of networks such as wireless communication, signals, speech synthesis, biomedical data in terms of blood pressure, ECG, EEG and temperature of a human being etc. An important class of stochastic process is Markov process which possess the past forgetting property, that is the result arises from each incident rely on the present but not on the past. This Markov property enables reasoning and computation with the model that would be otherwise intractable. In this paper the speech disorder developed by the Febrile infection-related epilepsy syndrome (FIRES) disease whose symptoms are discussed using Markov chain modeling as a new technique and its properties using a pictorial representation to enable the identification of an effective speech disorder therapy.
机译:概率随机模型与无线通信,信号,语音合成,生物医学数据在血压,心电图,脑电图和人类的温度方面的现实生活中涉及现实生活应用。重要的随机过程中的重要过程是马尔可夫过程这拥有过去的遗忘财产,即结果来自每个事件的结果依赖于现在但不在过去。此Markov属性使得可以使用其他难以相容的模型来推理和计算。在本文中,通过使用Markov链模型作为一种新技术及其性质来讨论其症状的发热相关癫痫综合征(火灾)疾病的语音障碍,其使用图形表示来识别有效的语音障碍治疗。

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