福建省网格化机会挖掘数据
收藏浙江省数据知识产权登记平台2024-10-24 更新2024-10-25 收录
下载链接:
https://www.zjip.org.cn/home/announce/trends/75134
下载链接
链接失效反馈官方服务:
资源简介:
将福建省所有街道(镇)称作网格,共计1170个网格。创建每个网格的宏观经济、商业氛围、厨电行业、住宅区等维度的数据集。创建并训练机器学习、深度学习算法模型。输出每个网格是否应该开店,开多少家店,并输出福建省所有网格对开店机会的预测评分;实地操盘手可根据预测评分高低,进行网格化工作策略制定、资源分配优化及策略纠偏,同行业也可通过网格化机会挖掘算法预测开店机会。1、数据收集:整理并清洗福建省所有网格(1170街道/镇)的前一年份第三产业GDP、洗衣店、集成灶、烟酒专卖店、房产中介、竞品、宠物诊所、商场、住宅区、区县_乡村总数量、格均社消额、格均土地面积等12个维度的所有数据。
2、模型建立:针对有店的网格数据,建立RF(随机森林)、LGBM(梯度提升决策树)、MLP(人工神经网络)模型并进行集成学习,训练出12个维度与店之间的得分模型:网格得分=前一年份第三产业GDP*7.5%+洗衣店*13.9%+集成灶*6.6%+烟酒专卖店*6.2%+房产中介*1.7%+竞品*30.1%+宠物诊所*13.7%+商场*7.0%+住宅区*2.4%+区县_乡村总数量*3.8%+格均社消额*2.8%+格均土地面积*4.3%
3、通过训练好的模型对全部网格进行预测评分并输出无店网格的开店机会及空间:
网格得分<51,则无开店机会;50<网格得分<108,则有1个开店机会;107<网格得分<164,则有2个开店机会;网格得分>163,则有多个开店机会。
All streets and towns in Fujian Province are defined as grids, with a total of 1170 grids. Datasets for each grid are established with dimensions including macro-economy, business atmosphere, kitchen appliance industry, and residential quarters. Machine learning and deep learning algorithm models are created and trained. The model outputs whether a store should be opened in each grid, the number of stores to open, as well as the predicted store-opening opportunity score for all grids in Fujian Province. On-site operators can develop grid-based work strategies, optimize resource allocation, and adjust strategies based on the predicted scores. Peers in the same industry can also utilize the grid-based opportunity mining algorithm to forecast store-opening opportunities.
1. Data Collection: Sort out and clean data across 12 dimensions for all 1170 grids (streets/towns) in Fujian Province from the previous year, including the previous year's tertiary industry GDP, number of laundromats, integrated stoves, tobacco and wine specialty stores, real estate agencies, competing stores, pet clinics, shopping malls, residential quarters, total number of districts/counties and rural areas, average grid social consumer goods retail sales, and average grid land area.
2. Model Establishment: For grid data with existing stores, establish RF (Random Forest), LGBM (Light Gradient Boosting Machine), and MLP (Multi-Layer Perceptron) models, and conduct ensemble learning to train a scoring model linking the 12 dimensions and store openings: Grid Score = Previous year's tertiary industry GDP * 7.5% + Number of laundromats * 13.9% + Number of integrated stoves * 6.6% + Number of tobacco and wine specialty stores * 6.2% + Number of real estate agencies * 1.7% + Number of competing stores * 30.1% + Number of pet clinics * 13.7% + Number of shopping malls * 7.0% + Number of residential quarters * 2.4% + Total number of districts/counties and rural areas * 3.8% + Average grid social consumer goods retail sales * 2.8% + Average grid land area * 4.3%
3. Predict and Score All Grids Using the Trained Models and Output Store-Opening Opportunities and Space for Grids Without Stores:
- No store-opening opportunity if Grid Score < 51;
- 1 store-opening opportunity if 50 < Grid Score < 108;
- 2 store-opening opportunities if 107 < Grid Score < 164;
- Multiple store-opening opportunities if Grid Score > 163.
提供机构:
宁波方太营销有限公司
创建时间:
2024-09-22
搜集汇总
数据集介绍

特点
该数据集提供了福建省1170个网格的详细经济与商业数据,用于通过机器学习模型预测开店机会,支持策略制定和资源优化。
以上内容由遇见数据集搜集并总结生成



