预测球迷对赞助商态度分类的机器学习方法

Junyi Bian, Benjamin Colin Cork
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引用次数: 0

摘要

目的 本研究旨在开发和验证一个准确的机器学习模型,根据 NBA 球迷对体育赞助商的看法将其分为有意义的群组。此外,通过预测 NBA 球迷对赞助商态度的强度,作者打算找出影响预测的具体特征,讨论这些发现,并为体育赞助领域的学者和从业人员提供启示。球迷认同、赞助契合度、行为意向、赞助商利他动机、赞助商规范动机、赞助商利己动机作为预测因子,球迷对赞助商的态度作为因变量。在通过探索性因子分析(EFA)和确证性因子分析(CFA)验证测量模型后,使用 LASSO 回归、SVM、KNN、RF 和 XGboost 建立并验证了预测模型。结果RF 模型在预测球迷对赞助商态度强度方面的准确度最高,其 AUC 为 0.919,灵敏度为 0.872,特异度为 0.828,PPV 为 0.873,NPV 为 0.828,准确度为 0.848。"球迷对赞助商规范性动机的看法"、"支持赞助商的行为意向"、"球迷对其喜爱球队的认同"、"球迷对赞助商利他主义动机的看法 "和 "球迷对赞助商利己主义动机的看法 "依次表现出来。原创性/价值 本研究首次在体育赞助领域利用机器学习模型准确地将球迷对赞助商的态度强度划分为 "高 "或 "低",并从球迷对赞助过程的感知出发,阐述球迷对赞助商的态度是如何形成的。
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A machine learning approach to predict classification of fans’ attitudes toward sponsors

Purpose

This study aims to develop and validate an accurate machine learning model to categorize NBA fans into meaningful clusters based on their perceptions of sport sponsorship. Additionally, by predicting the intensity of NBA fans’ attitudes toward sponsors, the authors intend to identify the specific features that influence prediction, discuss these findings and offer implications for academics and practitioners in sport sponsorship.

Design/methodology/approach

This study used a sample of 1,142 NBA fans who were recruited through Amazon Mechanical Turk (MTurk). Fans identification, sponsorship fit, behavioral intentions, sponsor altruistic motive, sponsor normative motive, sponsor egoistic motive were surveyed as predictors, whereas fans’ attitudes toward sponsors was collected as the dependent variable. The LASSO regression, SVM, KNN, RF and XGboost were used to develop and validate the prediction model after verifying the measurement model by the Exploratory Factor Analysis (EFA) and Confirmatory Factor Analysis (CFA).

Findings

The RF model had the best accurate in predicting the intensity of fans’ attitudes toward sponsors, achieving an AUC of 0.919 with a sensitivity of 0.872, a specificity of 0.828, a PPV of 0.873, a NPV of 0.828 and an accuracy of 0.848. The most influential feature in the model was “the fit of 0.301”. “Fans’ perceptions of sponsor’s normative motive”, “behavioral intentions supporting sponsors”, “fans’ identification with their favorite team”, “fans’ perceptions of sponsor’s altruistic motive” and “fans’ perceptions of sponsor’s egoistic motive” were exhibited in descending order.

Originality/value

This study is the first in sport sponsorship to accurately classify the intensity of fans’ attitudes toward sponsors as either high or low using machine learning models, and to formulate how fans’ attitudes formed toward sponsors from their perceptions of sponsorship process.

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