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GPU accelerated item-based collaborative filtering for big-data applications

机译:GPU加速的基于项目的协作式过滤,适用于大数据应用

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摘要

Recommendation systems are a popular marketing strategy for online service providers. These systems predict a customer's future preferences from the past behaviors of that customer and the other customers. Most of the popular online stores process millions of transactions per day; therefore, providing quick and quality recommendations using the large amount of data collected from past transactions can be challenging. Parallel processing power of GPUs can be used to accelerate the recommendation process. However, the amount of memory available on a GPU card is limited; thus, a number of passes may be required to completely process a large-scale dataset. This paper proposes two parallel, item-based recommendation algorithms implemented using the CUDA platform. Considering the high sparsity of the user-item data, we utilize two compression techniques to reduce the required number of passes and increase the speedup. The experimental results on synthetic and real-world datasets show that our algorithms outperform the respective CPU implementations and also the naïve GPU implementation which does not use compression.
机译:推荐系统是在线服务提供商的流行营销策略。这些系统根据该客户和其他客户的过去行为来预测该客户的未来偏好。大多数流行的在线商店每天处理数百万笔交易;因此,使用从过去的交易中收集到的大量数据来提供快速,高质量的建议可能具有挑战性。 GPU的并行处理能力可用于加速推荐过程。但是,GPU卡上的可用内存量有限。因此,可能需要多次通过才能完全处理大规模数据集。本文提出了使用CUDA平台实现的两种基于项目的并行推荐算法。考虑到用户项目数据的稀疏性,我们利用两种压缩技术来减少所需的通过次数并提高速度。在综合和真实数据集上的实验结果表明,我们的算法优于各自的CPU实现,并且优于不使用压缩的单纯GPU实现。

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