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Hotel Management Evaluation Index System Based on Data Mining and Deep Neural Network

机译:基于数据挖掘和深神经网络的酒店管理评估指标体系

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In recent years, with the increase in computing power, the sharp drop in costs, and the successful use of data management technology, a large amount of data has been rapidly spread and stored in various fields of the company. How can we passively find active data and form active knowledge from these big data information, know how to use equipment to quickly and accurately obtain high-quality information, use the obtained information to guide users in decision-making, and provide more economic and social benefits? This paper focuses on the study of the classifier model based on BP neural network, and the combination of BP neural network model and other optimization algorithms, including genetic algorithm (GA), particle swarm algorithm (PSO), Adaboost algorithm, GA, and PSO have global search performance. It is mostly used to optimize the weight threshold of the network and the number of hidden layer nodes. The Adaboost algorithm builds an enhanced classifier based on the idea of integration. At present, data mining technology has moved from the laboratory research stage to the commercialization stage. The use of widely owned knowledge and information as analysis tools can be used in many fields: such as financial analysis, engineering design, scientific research, management, and production control. At the end of this paper, the improved Adaboost_BP classifier is used, and the result proves that the efficiency of hotel management has increased by at least 75%.
机译:近年来,随着增加的计算能力,在成本大幅下降,并成功地利用数据管理技术,大数据量已经迅速传播,并存储在公司的各个领域。我们怎样才能被动地找到活动的数据,并形成从这些大数据信息的主动式知识,知道如何使用设备快速,准确地获得高质量的信息,使用获得的信息来指导决策的用户,并提供更多的经济和社会好处?本文重点研究基于BP神经网络的分类器模型,和BP神经网络模型和其他优化算法,包括遗传算法(GA),粒子群算法(PSO),Adaboost算法,GA和PSO的组合的研究具有全局搜索性能。它主要用于优化网络的重量阈值,并且隐藏层节点的数量。 AdaBoost算法建立了基于整合的思想增强分类。目前,数据挖掘技术已经从实验室研究阶段到商业化阶段移动。如财务分析,工程设计,科研,管理和生产控制:使用广泛拥有的知识和分析工具的信息可以在许多领域中使用。在本文的目的,改进的Adaboost_BP分类器被使用,并且该结果证明,宾馆管理的效率提高了至少75%。

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