十进制二进制向量能否作为DNA序列的分类代表?

Prima Sanjaya, Dae-Ki Kang
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引用次数: 1

摘要

近年来,一种由受限玻尔兹曼机以贪婪方式堆叠而成的深度学习模型——深度信念网络(deep Belief Network, DBN)被广泛应用于分类和识别。该模型具有提取高层次抽象特征和处理高维数据结构的能力,在图像和语音识别方面取得了优异的成绩。在本研究中,我们评估了深度学习在dna分类水平上的适用性。由于DBN的训练阶段成本较高,特别是处理具有数千个变量的DNA序列时,我们引入了一种新的编码方法,使用十进制二进制向量表示序列作为模型的输入,然后与两个数据集的单热向量编码进行比较。我们用不同的对比算法对我们提出的模型进行了评估,在分类结果比较的情况下,训练速度有了明显的提高。这一结果显示了利用DBN上的十进制二进制载体进行DNA序列分析,解决生物信息学中其他序列问题的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Could Decimal-binary Vector be a Representative of DNA Sequence for Classification?
In recent years, one of deep learning models called Deep Belief Network (DBN) which formed by stacking restricted Boltzman machine in a greedy fashion has beed widely used for classification and recognition. With an ability to extracting features of high-level abstraction and deal with higher dimensional data structure, this model has ouperformed outstanding result on image and speech recognition. In this research, we assess the applicability of deep learning in dna classification level. Since the training phase of DBN is costly expensive, specially if deals with DNA sequence with thousand of variables, we introduce a new encoding method, using decimal-binary vector to represent the sequence as input to the model, thereafter compare with one-hot-vector encoding in two datasets. We evaluated our proposed model with different contrastive algorithms which achieved significant improvement for the training speed with comparable classification result. This result has shown a potential of using decimal-binary vector on DBN for DNA sequence to solve other sequence problem in bioinformatics.
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