基于数据挖掘和社交行为的用户偏好挖掘算法在品牌建设中的应用

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引用次数: 0

摘要

目前,中小型企业缺乏品牌建设。因此,为进一步推动企业主动进行品牌建设,本研究提出了一种基于数据挖掘和社交行为的用户偏好挖掘算法。利用该算法研究用户的品牌偏好程度,可以为企业的品牌建设提供数据支持。实验结果表明,所提出的算法在性能、收敛性和准确性方面都优于之前的算法。曲线下面积达到 0.953,表明输出结果具有极高的真实性。在实际模拟实验中,该算法对用户品牌偏好指数的预测结果非常准确,误差仅为 0.11,在业内人士中获得了极高的评价。总之,本研究提出的基于数据挖掘和社会行为的用户偏好挖掘算法对企业的品牌建设起到了较好的促进作用。它可以帮助企业了解消费者对其品牌的偏好程度,并据此判断其不足之处,为其提供有效、准确的数据支持,从而促进其品牌建设。
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Application of user preference mining algorithms based on data mining and social behavior in brand building
Small and medium-sized enterprises currently suffer from a lack of branding. Therefore, to further promote their active branding, this study proposes a user preference mining algorithm based on data mining and social behavior. Employing this algorithm to study the degree of users’ brand preference can provide data support for enterprises’ brand building. The experimental results showed that the proposed algorithm outperforms previous algorithms in terms of performance, convergence, and accuracy. The area under the curve reached 0.953, indicating highly authentic output results with extremely high realism. In actual simulation experiments, its prediction results for the user’s brand preference index are accurate, with an error of only 0.11, and the algorithm has extremely high ratings among industry insiders. In conclusion, the user-preference mining algorithm based on data mining and social behaviors suggested in this study plays a better role in promoting an enterprise’s brand building. It can help the enterprise know the level of consumer preference for its brand; accordingly, it can determine the shortcomings in, provide effective and accurate data support for, and thereby promote its brand building.
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