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Sales Forecasting Based on AutoRegressive Integrated Moving Average and Recurrent Neural Network Hybrid Model

机译:基于自回归综合移动平均和递归神经网络混合模型的销售预测

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Sales forecasting is essential to a survival of a business in this competitive world. Nowadays with the high volatility in sales revenue, accurate sales predication is a challenge. Hence, recurrent neural networks in forecasting has become popular over the recent years due its data driven nature, flexibility and usage of multiple inputs to identify sequential connection between those. While recurrent neural network individually makes accurate predictions better than traditional statistical forecasting models like autoregressive integrated moving average model, a combination of statistical autoregressive integrated moving average model and recurrent neural networks model enhances performance and it is the most suitable for this domain. Therefore, the proposed hybrid model is capable to identify features of past sales data, statistically predicted data, counts of positive and negative reviews of a particular product for a given period and correlate all of them to yield an accurate sales prediction.
机译:在这个竞争激烈的世界中,销售预测对于企业的生存至关重要。如今,随着销售收入的高波动性,准确的销售预测已成为一个挑战。因此,近年来,由于其数据驱动的特性,灵活性以及使用多个输入来识别它们之间的顺序联系,在预测中使用递归神经网络已变得越来越流行。尽管递归神经网络单独做出的预测比传统统计预测模型(例如自回归综合移动平均值模型)更好,但统计自回归综合移动平均值模型和递归神经网络模型的组合提高了性能,它最适合此领域。因此,提出的混合模型能够识别过去的销售数据,统计预测的数据,特定产品在给定时期内的正面和负面评论的计数,并将它们关联起来以产生准确的销售预测。

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