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Data-Driven Ensembles for Deep and Hard-Decision Hybrid Decoding

机译:用于深度和硬决策混合解码的数据驱动集成

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Ensemble models are widely used to solve complex tasks by their decomposition into multiple simpler tasks, each one solved locally by a single member of the ensemble. Decoding of error-correction codes is a hard problem due to the curse of dimensionality, leading one to consider ensembles-of-decoders as a possible solution. Nonetheless, one must take complexity into account, especially in decoding. We suggest a low-complexity scheme where a single member participates in the decoding of each word. First, the distribution of feasible words is partitioned into non-overlapping regions. Thereafter, specialized experts are formed by independently training each member on a single region. A classical hard-decision decoder (HDD) is employed to map every word to a single expert in an injective manner. FER gains of up to 0.4dB at the waterfall region, and of 1.25dB at the error floor region are achieved for two BCH(63,36) and (63,45) codes with cycle-reduced parity-check matrices, compared to the previous best result of [1].
机译:集成模型通过分解为多个较简单的任务而广泛用于解决复杂的任务,每个任务都由集成的单个成员在本地解决。由于维数的诅咒,纠错码的解码是一个困难的问题,导致人们考虑将解码器集成作为一种可能的解决方案。但是,必须考虑复杂性,尤其是在解码中。我们建议一种低复杂度的方案,其中单个成员参与每个单词的解码。首先,将可行单词的分布划分为非重叠区域。此后,通过在单个区域上对每个成员进行独立培训来形成专门的专家。采用经典的硬决策解码器(HDD)以注入方式将每个单词映射到单个专家。与采用BHC(63,36)和(63,45)编码的两个BCH(63,36)和(63,45)代码相比,在瀑布区域的FER增益高达1.25dB,在错误基底区域的FER增益高达1.25dB。先前[1]的最佳结果。

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