A Proposal Digital Marketing Strategy for MarcheluzzoSrl: Training and Evaluating a Prediction Model for the Number of Adv. Impressions

Charles Alves de Castro
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Abstract

: This research aims to describe a digital marketing strategy elaborated to be deployed in the Marcheluzzo Srl Company located in Italy. In addition, it intends to give a wide range of information to the company about its customers, target, competitors, market, digital marketing strategy, and potential recommendations. It is also important to highlight that this strategy is focused on the Brazilian market. Most of the information collected for the situational analysis and many other components for this research were gathered through the author`s perception during his internship in the company. The methodology includes secondary data collected through field observation in the company, documents provided by the organization and internet sources. Finally, the proposal digital marketing strategy was validated through a prediction model using machine-learning system via Python and its tools. The result of the prediction model was addressed and analyzed based on linear regression and correlation matrix methods confirming the efficacy of the proposal strategy, consequently the reliability of the prediction model. (2012). Research areas of interest: a) Marketing, Social Marketing and Digital Marketing; b) People Management, Internationalization of People and Transcultural Human Resources Management.
marcheluzzosl的数字营销策略建议:广告展示数预测模型的训练和评估
:本研究的目的是描述一个数字营销战略阐述部署在Marcheluzzo公司位于意大利。此外,它还打算向公司提供有关其客户、目标、竞争对手、市场、数字营销策略和潜在建议的广泛信息。同样重要的是要强调,这一战略的重点是巴西市场。情景分析所收集的大部分信息和本研究的许多其他组成部分都是作者在该公司实习期间通过感知收集到的。该方法包括通过公司实地观察收集的二手数据,组织提供的文件和互联网资源。最后,通过使用Python及其工具的机器学习系统的预测模型验证了提议的数字营销策略。基于线性回归和相关矩阵方法对预测模型的结果进行了寻址和分析,验证了提议策略的有效性,从而验证了预测模型的可靠性。(2012)。研究方向:a)市场营销、社会营销和数字营销;b)人员管理、人员国际化与跨文化人力资源管理。
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