REVEALING HIDDEN TRENDS: INVESTIGATING PRODUCT SALES PATTERNS WITH CATEGORICAL AND CONTINUOUS PREDICTORS IN A DISTINCTIVE DATASET

Kristina Zogović
{"title":"REVEALING HIDDEN TRENDS: INVESTIGATING PRODUCT SALES PATTERNS WITH CATEGORICAL AND CONTINUOUS PREDICTORS IN A DISTINCTIVE DATASET","authors":"Kristina Zogović","doi":"10.35120/sciencej0203061z","DOIUrl":null,"url":null,"abstract":"This comprehensive research delves deeply into the intricate web of variables that influence product sales performance within e-commerce. At the heart of our study lies a distinctive dataset meticulously curated from data.world.com, a repository that boasts a rich tapestry of 43 columns and 1,573 rows, each offering a snapshot into the diverse array of products available on the esteemed Wish.com platform. It is essential to underscore that this repository, in contrast to traditional datasets, not only comprises product listings but also intricately weaves in product ratings and sales performance metrics, thus conferring a singular perspective that ignites novel avenues for analysis. Our research journey unfurls as we deftly construct a predictive model that unveils the hidden tapestry of correlations and patterns beneath the surface of product success. With a deft interplay of categorical and continuous predictors, we undertake the task of untangling the intricate associations deeply embedded within the dataset’s fabric. Here, our ensemble of five categorical variables assumes center stage, each sentinel to fulfill specific prerequisites within a given record. This chorus of categorical variables harmonizes with six numerical features, their collective symphony orchestrated to predict, with remarkable precision, the number of units that will find eager homes. The orchestration of meaningful insights rests firmly in the capable hands of the R programming language, a formidable ally in our endeavor to analyze and assess our treasure trove of data meticulously. Our modeling odyssey reaches its zenith in forming a distilled iteration, where two categorical predictors, their symbiotic interaction, and two continuous predictors merge into a harmonious whole. With the scaffolding of linear regression, we erect a robust mathematical foundation that systematically explores the intricate dance between predictors and the response variable. A symphony of meticulous tests, encompassing individual t-tests and hypothesis evaluations, becomes the crucible in which we forge the significance of our predictors. In this crucible, we lay bare the undeniable sway of certain variables over product sales while others offer glimpses of more muted predictive power. Our discerning gaze extends to the determination of beta coefficients, confidence intervals, and the broader evaluation of model significance, each thread woven intricately into the fabric of our research narrative. In this journey, our scrutiny takes us through the labyrinthine alleys of an interaction term, and its role is dissected with utmost rigor through the prism of ANOVA and hypothesis testing. The mosaic of emerging statistical evidence compels us towards a reasonable simplification, a decision informed by the realization that its contribution to explanatory power is akin to a fleeting whisper. In summation, our study embarks on a voyage to demystify the intricate choreography that underpins e-commerce product sales. We unpick the skeins of association that weave through the constellation of predictors and sales performance, ultimately furnishing practitioners and researchers with a unique vantage point. Armed with these insights, they traverse the ever-evolving landscape of online retail with an enhanced ability to chart courses, optimize strategies, and make informed decisions that resonate with the symphony of success.","PeriodicalId":9803,"journal":{"name":"Chemical Science International Journal","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2023-09-26","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Chemical Science International Journal","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.35120/sciencej0203061z","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0

Abstract

This comprehensive research delves deeply into the intricate web of variables that influence product sales performance within e-commerce. At the heart of our study lies a distinctive dataset meticulously curated from data.world.com, a repository that boasts a rich tapestry of 43 columns and 1,573 rows, each offering a snapshot into the diverse array of products available on the esteemed Wish.com platform. It is essential to underscore that this repository, in contrast to traditional datasets, not only comprises product listings but also intricately weaves in product ratings and sales performance metrics, thus conferring a singular perspective that ignites novel avenues for analysis. Our research journey unfurls as we deftly construct a predictive model that unveils the hidden tapestry of correlations and patterns beneath the surface of product success. With a deft interplay of categorical and continuous predictors, we undertake the task of untangling the intricate associations deeply embedded within the dataset’s fabric. Here, our ensemble of five categorical variables assumes center stage, each sentinel to fulfill specific prerequisites within a given record. This chorus of categorical variables harmonizes with six numerical features, their collective symphony orchestrated to predict, with remarkable precision, the number of units that will find eager homes. The orchestration of meaningful insights rests firmly in the capable hands of the R programming language, a formidable ally in our endeavor to analyze and assess our treasure trove of data meticulously. Our modeling odyssey reaches its zenith in forming a distilled iteration, where two categorical predictors, their symbiotic interaction, and two continuous predictors merge into a harmonious whole. With the scaffolding of linear regression, we erect a robust mathematical foundation that systematically explores the intricate dance between predictors and the response variable. A symphony of meticulous tests, encompassing individual t-tests and hypothesis evaluations, becomes the crucible in which we forge the significance of our predictors. In this crucible, we lay bare the undeniable sway of certain variables over product sales while others offer glimpses of more muted predictive power. Our discerning gaze extends to the determination of beta coefficients, confidence intervals, and the broader evaluation of model significance, each thread woven intricately into the fabric of our research narrative. In this journey, our scrutiny takes us through the labyrinthine alleys of an interaction term, and its role is dissected with utmost rigor through the prism of ANOVA and hypothesis testing. The mosaic of emerging statistical evidence compels us towards a reasonable simplification, a decision informed by the realization that its contribution to explanatory power is akin to a fleeting whisper. In summation, our study embarks on a voyage to demystify the intricate choreography that underpins e-commerce product sales. We unpick the skeins of association that weave through the constellation of predictors and sales performance, ultimately furnishing practitioners and researchers with a unique vantage point. Armed with these insights, they traverse the ever-evolving landscape of online retail with an enhanced ability to chart courses, optimize strategies, and make informed decisions that resonate with the symphony of success.
揭示隐藏的趋势:在独特的数据集中使用分类和连续预测器调查产品销售模式
这项全面的研究深入研究了影响电子商务产品销售业绩的复杂变量网络。我们研究的核心是一个独特的数据集,这个数据集是由data.world.com精心策划的,这个数据库拥有43列和1573行丰富的挂毯,每一列都提供了备受尊敬的Wish.com平台上各种产品的快照。必须强调的是,与传统数据集相比,该存储库不仅包含产品列表,还包含产品评级和销售业绩指标,因此赋予了一个单一的视角,为分析提供了新的途径。当我们巧妙地构建一个预测模型时,我们的研究之旅展开了,该模型揭示了产品成功表面下隐藏的相关性和模式的挂毯。通过分类预测器和连续预测器的巧妙相互作用,我们承担了解开深嵌在数据集结构中的复杂关联的任务。在这里,我们的五个分类变量集合处于中心位置,每个变量都要满足给定记录中的特定先决条件。这种分类变量的合唱与六个数字特征相协调,它们的集体交响曲精心编排,以惊人的精度预测将找到渴望家园的单位数量。有意义的见解的编排牢牢地掌握在R编程语言的手中,它是我们努力细致地分析和评估我们的数据宝库的强大盟友。我们的建模奥德赛在形成一个蒸馏迭代中达到了顶峰,其中两个分类预测器,它们的共生相互作用,以及两个连续预测器合并成一个和谐的整体。在线性回归的框架下,我们建立了一个强大的数学基础,系统地探索预测因子和响应变量之间的复杂舞蹈。一系列细致的检验,包括个体t检验和假设评估,成为我们锻造预测指标重要性的坩埚。在这场考验中,我们揭示了某些变量对产品销售的不可否认的影响,而其他变量则提供了一种更为微弱的预测能力。我们敏锐的目光延伸到贝塔系数的确定、置信区间和更广泛的模型意义评估,每一条线索都错综复杂地编织到我们的研究叙述中。在这段旅程中,我们的审视带我们穿越了互动术语的迷宫小巷,并通过方差分析和假设检验的棱镜极其严格地剖析了它的作用。新出现的统计证据的马赛克迫使我们走向合理的简化,这一决定是由于意识到它对解释力的贡献类似于短暂的低语。总而言之,我们的研究开始揭开支撑电子商务产品销售的复杂编排的神秘面纱。我们在预测者和销售业绩之间拆解关联,最终为从业者和研究人员提供一个独特的有利位置。有了这些见解,他们在不断发展的在线零售领域中,以增强的能力来规划路线,优化策略,做出明智的决策,从而与成功的交响乐产生共鸣。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
求助全文
约1分钟内获得全文 求助全文
来源期刊
自引率
0.00%
发文量
0
×
引用
GB/T 7714-2015
复制
MLA
复制
APA
复制
导出至
BibTeX EndNote RefMan NoteFirst NoteExpress
×
提示
您的信息不完整,为了账户安全,请先补充。
现在去补充
×
提示
您因"违规操作"
具体请查看互助需知
我知道了
×
提示
确定
请完成安全验证×
copy
已复制链接
快去分享给好友吧!
我知道了
右上角分享
点击右上角分享
0
联系我们:info@booksci.cn Book学术提供免费学术资源搜索服务,方便国内外学者检索中英文文献。致力于提供最便捷和优质的服务体验。 Copyright © 2023 布克学术 All rights reserved.
京ICP备2023020795号-1
ghs 京公网安备 11010802042870号
Book学术文献互助
Book学术文献互助群
群 号:481959085
Book学术官方微信