Shopping basket analysis

Retail Sales

1. Analysis background introduction

This case comes from a leading retail enterprise, focusing on providing consumers with diversified high-quality goods through online and offline channels. Since its establishment, the company has always been committed to optimizing the shopping experience, using advanced scientific and technological means and data analysis to accurately meet the needs of customers, hoping to provide important business opportunity insights to the leadership through shopping basket analysis, and improve customers' shopping experience to achieve sales performance growth.

2. Statement of key issues

The retail environment is changing rapidly, and consumers' purchasing behavior and preferences may also change at any time. Retail enterprises must establish a rapid response mechanism and adjust marketing strategies and product recommendations in time.

Retail enterprises usually have a variety of sales channels (such as online e-commerce platforms and offline physical stores), which leads to data dispersion and difficulty in integration.

When applying the results of shopping basket analysis in practice, how to effectively implement and monitor the effect of marketing strategies is also a major challenge, and it is necessary to systematically collect data monitoring results for a long time.

3. Analyze the plan

3.1 Select key data indicators. Collect product sales order data.

 

Serial number

Name of the indicator

Paraphrase

Analysis angle

1

Degree of support

Refers to the proportion of A and B products in all orders (the probability of purchasing AB goods at the same time): the number of orders purchased by AB at the same time/the number of all orders

The degree of support reflects the frequency of joint purchases of A and B commodities. High support means that these two goods are usually purchased together, which may be because they are complementary products or consumers tend to buy them together. By analyzing the degree of support, merchants can understand which product combinations are the most common, and then make bundled promotions or set up joint recommendations for these combinations.

2

Degree of confidence

It refers to the proportion of buying B under the premise of purchasing A (buying A goods and then buyingProbability of buying commodity B): the number of orders purchased by AB at the same time/the number of all orders including commodity A.

Credibility can help merchants understand when consumers choose a certain product (such as product A)After that, the possibility of buying another product (such as commodity B). High confidence means that buyers of product A are more inclined to buy product B, and merchants can make personalized recommendations based on this to improve the opportunity of cross-selling. For example, if consumers are likely to buy headphones (B product) after buying a certain brand of mobile phone (product A), then the headphones can be displayed on the shopping cart page through the recommendation system.

3

Degree of promotion

It refers to the proportion of buying B under the premise of buying A (the probability of buying product A and then buying product B is compared with the natural probability of buying product B): confidence/order ratio of buying B.

The degree of improvement can help merchants evaluate the intensity of the relationship between goods. If the degree of promotion is greater than 1, it means that after purchasing commodity A, the probability of buying commodity B is higher than the probability of naturally purchasing commodity B, indicating that there is a strong correlation between commodity A and commodity B. The higher the degree of promotion, the stronger the connection between the two products in the shopping cart, and merchants can consider bundling them together or recommending them to consumers. If the degree of improvement is close to 1, it means that there is no significant correlation between the purchase of goods A and B.

Explanation: The indicators selected in this case are common indicators in the analysis. In the analysis work, priority should be given to the indicators that have the greatest impact on the business to ensure that the purpose of the analysis is consistent with the business objectives and key performance.

3.2 Power BI Visualization Scheme

图形用户界面, 图表

AI 生成的内容可能不正确。

Note: The DEMO page data is simulated data, which is for reference only to the analysis angle and Power BI function display, and does not involve any actual business data.

4. Analysis and interpretation

Support: Help to identify the combination of frequently purchased goods.

图形用户界面, 图表, 应用程序

AI 生成的内容可能不正确。

Credibility: reveals the probability that consumers will buy another product when buying a product.

图表, 散点图, 气泡图

AI 生成的内容可能不正确。图标

AI 生成的内容可能不正确。

Elevation: Measure the degree of relevance of a product portfolio to help determine whether they are worth bundling or recommending.

图形用户界面, 应用程序

AI 生成的内容可能不正确。

5. Application effect

Increase sales:Shopping basket analysis can help identify the correlation between goods, thus prompting consumers to make more cross-purchases. For example, through analysis, it is found that a brand of shampoo and conditioner are usually purchased together, and enterprises can set up bundles or joint promotions for such goods to increase the average value of each shopping basket.

Optimize inventory management: By using the results of shopping basket analysis, enterprises can carry out inventory management more accurately. Understanding which goods are often purchased together can help to formulate a more reasonable inventory configuration, avoid out of stock or lag, and improve the inventory turnover rate.

Personalized recommendation:Shopping basket analysis can provide information on consumers' purchasing habits and preferences, and enterprises can make personalized recommendations based on these data. On the e-commerce platform, according to consumers' past purchase records, recommend relevant or complementary products to improve the purchase conversion rate of customers.

Improve customer satisfaction:By understanding consumers' purchasing behavior, enterprises can provide product portfolios and purchase suggestions that are more in line with customer needs in the shopping process, so as to improve the overall shopping experience of users and improve customer satisfaction and brand loyalty.

Optimize promotional activities:Shopping basket analysis can provide data support for the planning of promotional activities.By analyzing which product combinations are highly sold in a specific period of time, enterprises can carry out targeted promotion design to maximize the marketing effect and consumers' interest in purchasing.

Insight into the market trend:Regular shopping basket analysis will help enterprises track changes in market trends and consumer preferences. By analyzing the purchase data of different periods of time, you can find emerging hot-selling products or categories, quickly respond to the market, and maintain competitive advantages.

Support decision-making:Management can make more scientific and accurate business decisions based on the data insights of shopping basket analysis. This includes the formulation of key strategies such as product on-shelf, marketing, channel selection, etc. to ensure the efficient allocation of resources and the maximum return.

Summary:Retail enterprises can identify the commodity portfolio that needs to be analyzed through models, but the large-scale quantity of commodities and diversified consumer behavior make it complicated to choose the appropriate commodity portfolio. Too much combination analysis may lead to "data overfitting", that is, the model performs well in training data, but its prediction ability in real scenarios declines. Even if the commodity portfolio with high support, confidence and promotion is successfully calculated, it is still a challenge to interpret these results and translate them into practical business decisions. Retailers need to have an in-depth understanding of the logic behind these indicators and be able to transform them into feasible marketing strategies.