P. Khotimah, Andria Arisal, Dwi Alfianti, Nabila Putri, Ekasari Nugraheni, D. Riswantini
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引用次数: 0
摘要
中小企业没有进行大规模推广的资源。中小企业可以利用社交媒体建立品牌,并通过社交媒体向更广泛的社区推广自己的产品。中小企业与其关注者在社交媒体上的互动被认为是评估中小企业绩效的重要因素,如对发布的帖子的回复或反应的数量。本文旨在分析关注者在不同类型的中小企业帖子上的互动(点赞数);品牌推广、推广和推荐。我们对万隆烹饪行业中小企业的Instagram帖子进行了分析。他们的帖子和他们的粉丝互动被收集和分析,使用时间序列可视化来了解粉丝对帖子的互动动态。此外,我们使用预测分析来计算特定类型的帖子使用线性回归的预期相互作用的数量。我们的预测模型给出了相当低的误差值(平均绝对误差- mae = 6.524,均方根误差- rmse: 9.780)和良好的r平方值0.783。从预测结果中得出的一个有趣的见解表明,与推广帖子相比,推荐帖子将吸引更多的互动。
Engagement Analysis on Local Small-Medium Enterprises: Case Study in Bandung
Small-Medium Enterprises (SMEs) do not have the resources to carry out large-scale promotions. SMEs can use social media to build brands and promote their products to the wider community using social media. Engagement between SMEs and their followers in social media is considered important for evaluating SMEs’ performance as indicated by the interaction such as the number of responses or reactions to published posts. This paper aims to conduct an analysis of one of the followers’ interactions (number of likes) on different types of SME posts; branding, promotion, and testimonial. We do the analysis of Instagram posts by SMEs in the culinary sector located in Bandung. Their posts and their followers’ interactions are collected and analyzed using time series visualization to understand the dynamic of follower interactions towards the posts. Additionally, we use predictive analysis to figure out the number of expected interactions on the specific type of posts using linear regression. Our prediction model gives fairly low error values (mean absolute error-MAE = 6.524 and root mean square error-RMSE: 9.780) and a good R-squared value of 0.783. An interesting insight from the prediction results suggested that testimonial posts will draw more interaction compared to promotion posts.