Forecasting Consumer Price Index (CPI) Using Deep Learning and Hybrid Ensemble Technique

Mohammed Adnan. A, Prince Immanuel J, Roobini M. S
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引用次数: 1

Abstract

In today’s day and age, economic crises are all over the world due to high inflation. Inflation is a rise in price of the goods and services produced in a country. As a result of rising prices, a given amount of money can now buy fewer goods and services. The general public’s cost of living is affected by this loss of purchasing power, which ultimately slows economic growth. Thus, it has a negative impact on the purchasing power of the people. Various sorts of baskets of commodities are generated and tracked as price indices to calculate inflation or deflation, depending on the chosen set of goods and services used. One type of price index proposed in this project is Consumer Price Index (CPI), which looks at the weighted average of costs for a variety of products and services like transportation, food, and healthcare. This paper proposes different deep learning time series models such as LSTM, BiLSTM and hybrid ensemble learning to forecast the Indian consumer price index (CPI). These two single RNN models (LSTMs and BiLSTMs) are compared with the hybrid ensemble learning model to see which gives better forecasting results for the consumer price index.
基于深度学习和混合集成技术的消费者物价指数预测
在当今这个时代,由于高通货膨胀,经济危机遍布全球。通货膨胀是一个国家生产的商品和服务价格的上涨。由于物价上涨,一定数量的钱现在可以买到更少的商品和服务。普通民众的生活成本受到购买力丧失的影响,最终导致经济增长放缓。因此,它对人们的购买力产生了负面影响。根据所选择的商品和服务,产生并跟踪各种商品篮子作为价格指数,以计算通货膨胀或通货紧缩。本项目提出的一种价格指数是消费者价格指数(CPI),它考察各种产品和服务(如交通、食品和医疗保健)的加权平均成本。本文提出了不同的深度学习时间序列模型,如LSTM、BiLSTM和混合集成学习来预测印度消费者价格指数(CPI)。将这两种单一RNN模型(lstm和bilstm)与混合集成学习模型进行比较,看看哪种模型对消费者价格指数的预测效果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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