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A Hybrid Neural Network Model for Sales Forecasting Based on ARIMA and Search Popularity of Article Titles

机译:基于ARIMA的销售预测混合神经网络模型,文章标题的搜索普及

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摘要

Enhancing sales and operations planning through forecasting analysis and business intelligence is demanded in many industries and enterprises. Publishing industries usually pick attractive titles and headlines for their stories to increase sales, since popular article titles and headlines can attract readers to buy magazines. In this paper, information retrieval techniques are adopted to extract words from article titles. The popularity measures of article titles are then analyzed by using the search indexes obtained from Google search engine. Backpropagation Neural Networks (BPNNs) have successfully been used to develop prediction models for sales forecasting. In this study, we propose a novel hybrid neural network model for sales forecasting based on the prediction result of time series forecasting and the popularity of article titles. The proposed model uses the historical sales data, popularity of article titles, and the prediction result of a time series, Autoregressive Integrated Moving Average (ARIMA) forecasting method to learn a BPNN-based forecasting model. Our proposed forecasting model is experimentally evaluated by comparing with conventional sales prediction techniques. The experimental result shows that our proposed forecasting method outperforms conventional techniques which do not consider the popularity of title words.
机译:许多行业和企业都要求通过预测分析和商业智能加强销售和运营规划。出版行业通常挑选有吸引力的标题和头条新闻,以增加销售,因为流行的文章和头条新闻可以吸引读者购买杂志。在本文中,采用了信息检索技术来提取物品标题的单词。然后通过使用从Google搜索引擎获得的搜索索引来分析物品标题的普及度量。 BackPropagation神经网络(BPNNS)已成功用于开发销售预测的预测模型。在本研究中,基于时间序列预测的预测结果和文章标题的普及,提出了一种新的混合神经网络模型。拟议的模型使用历史销售数据,文章标题的普及,以及时间序列的预测结果,自回归综合移动平均(ARIMA)预测方法,用于学习基于BPNN的预测模型。通过与常规销售预测技术进行比较,通过比较来评估我们所提出的预测模型。实验结果表明,我们所提出的预测方法优于不考虑标题词普及的常规技术。

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