Abstract
In the digital age, businesses are increasingly leveraging the internet as a pivotal platform for expansion. Establishing an online presence, whether through official websites or e-commerce platforms, has become imperative. Within this landscape, the integration of data mining technology has introduced innovative predictive techniques, revolutionizing the relationship between customers and businesses. Entrepreneurs are driven to curate their products systematically, aligning them with patterns derived from extensive data analyses, including user ratings, behavior, and purchasing history. Such analyses hold the key to predicting consumer outcomes, shaping strategies that resonate with customer preferences. In this context, the Apriori algorithm emerges as a beacon of insight and prediction. By identifying frequent itemsets—sets of items that meet specific support and confidence thresholds—Apriori empowers businesses to discern meaningful patterns in customer preferences. Support quantifies the frequency of specific items, while confidence illuminates sequential product acquisition behaviors. These insights are invaluable in attracting and retaining customers. Notably, the Apriori algorithm transcends traditional sales prediction paradigms. Its versatility extends beyond commerce, finding applications in diverse domains such as weather forecasting, disease prediction, and intrusion detection. This paper adopts a quantitative method and delves into the strategic application of the Apriori algorithm, specifically in the realm of sales forecasting.
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