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Fine-Tuning Infinity Restricted Boltzmann Machines

机译:微调无限间受限制的Boltzmann机器

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Restricted Boltzmann Machines (RBMs) have received special attention in the last decade due to their outstanding results in number of applications, such as face and human motion recognition, and collaborative filtering, among others. However, one of the main concerns about RBMs is related to the number of hidden units, which is application-dependent. Infinite RBM (iRBM) was proposed as an alternative to the regular RBM, where the number of units in the hidden layer grows as long as it is necessary, dropping out the need for selecting a proper number of hidden units. However, a less sensitive regularization parameter is introduced as well. This paper proposes to fine-tune iRBM hyper-parameters by means of meta-heuristic techniques such as Particle Swarm Optimization, Bat Algorithm, Cuckoo Search, and the Firefly Algorithm. The proposed approach is validated in the context of binary image reconstruction over two well-known datasets. Furthermore, the experimental results compare the robustness of the iRBM against the RBM and Ordered RBM (oRBM) using two different learning algorithms, showing the suitability in using meta-heuristics for hyper-parameter fine-tuning in RBM-based models.
机译:受限制的Boltzmann Machines(RBMS)在过去十年中受到特别关注,因为它们的突出结果,如面部和人类运动识别,以及协作过滤等。然而,关于RBM的主要问题之一与隐藏单元的数量有关,其依赖于应用。提出无限RBM(IRBM)作为常规RBM的替代方案,其中隐藏层中的单位数量长,只要需要丢弃选择适当数量的隐藏单元的需要。但是,也介绍了较少敏感的正则化参数。本文通过粒子群优化,BAT算法,杜鹃搜索和萤火虫算法等元启发式技术提出微调IRBM超参数。在两个众所周知的数据集中的二进制图像重建的上下文中验证了所提出的方法。此外,实验结果将IRBM对RBM对RBM的鲁棒性和订购的RBM(ORBM)使用两个不同的学习算法进行比较,显示使用基于RBM的模型中的超参数微调的Meta-LeuRistics的适用性。

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