Files
users/services/data-analysis-service.ts
v0 2408d50cb0 refactor: overhaul UI for streamlined user experience
Redesign navigation, home overview, user portrait, and valuation pages
with improved functionality and responsive design.

Co-authored-by: null <4804959+fnvtk@users.noreply.github.com>
2025-07-18 13:47:12 +00:00

293 lines
7.5 KiB
TypeScript

import type {
UserRFMData,
RFMAnalysisResult,
UserFilterOptions,
DataComparisonResult,
UserSegment,
} from "@/types/data-analysis"
// 模拟用户RFM数据
export const getUserRFMData = (): UserRFMData[] => {
return [
{
userId: "1",
userName: "张三",
phone: "13812345678",
lastPurchaseDate: "2023-07-15",
purchaseFrequency: 12,
totalSpent: 15800,
rfmScore: {
recency: 5,
frequency: 5,
monetary: 5,
totalScore: 15,
},
segment: "高价值活跃用户",
valueEstimation: 3200,
},
{
userId: "2",
userName: "李四",
phone: "13987654321",
lastPurchaseDate: "2023-06-20",
purchaseFrequency: 8,
totalSpent: 9500,
rfmScore: {
recency: 4,
frequency: 4,
monetary: 4,
totalScore: 12,
},
segment: "中价值活跃用户",
valueEstimation: 1800,
},
{
userId: "3",
userName: "王五",
phone: "13765432198",
lastPurchaseDate: "2023-04-10",
purchaseFrequency: 3,
totalSpent: 3200,
rfmScore: {
recency: 2,
frequency: 2,
monetary: 3,
totalScore: 7,
},
segment: "低价值流失风险用户",
valueEstimation: 650,
},
{
userId: "4",
userName: "赵六",
phone: "13654321987",
lastPurchaseDate: "2023-07-18",
purchaseFrequency: 15,
totalSpent: 25000,
rfmScore: {
recency: 5,
frequency: 5,
monetary: 5,
totalScore: 15,
},
segment: "高价值活跃用户",
valueEstimation: 4500,
},
{
userId: "5",
userName: "钱七",
phone: "13543219876",
lastPurchaseDate: "2023-03-15",
purchaseFrequency: 6,
totalSpent: 12000,
rfmScore: {
recency: 1,
frequency: 3,
monetary: 4,
totalScore: 8,
},
segment: "中价值沉睡用户",
valueEstimation: 1200,
},
{
userId: "6",
userName: "孙八",
phone: "13432198765",
lastPurchaseDate: "2023-07-10",
purchaseFrequency: 4,
totalSpent: 5800,
rfmScore: {
recency: 4,
frequency: 3,
monetary: 3,
totalScore: 10,
},
segment: "中价值活跃用户",
valueEstimation: 950,
},
{
userId: "7",
userName: "周九",
phone: "13321987654",
lastPurchaseDate: "2023-05-25",
purchaseFrequency: 2,
totalSpent: 2500,
rfmScore: {
recency: 3,
frequency: 2,
monetary: 2,
totalScore: 7,
},
segment: "低价值流失风险用户",
valueEstimation: 480,
},
{
userId: "8",
userName: "吴十",
phone: "13219876543",
lastPurchaseDate: "2023-07-20",
purchaseFrequency: 10,
totalSpent: 18000,
rfmScore: {
recency: 5,
frequency: 4,
monetary: 5,
totalScore: 14,
},
segment: "高价值活跃用户",
valueEstimation: 3600,
},
{
userId: "9",
userName: "郑十一",
phone: "13198765432",
lastPurchaseDate: "2023-02-10",
purchaseFrequency: 5,
totalSpent: 8000,
rfmScore: {
recency: 1,
frequency: 3,
monetary: 3,
totalScore: 7,
},
segment: "中价值沉睡用户",
valueEstimation: 850,
},
{
userId: "10",
userName: "王十二",
phone: "13098765432",
lastPurchaseDate: "2023-07-05",
purchaseFrequency: 7,
totalSpent: 13500,
rfmScore: {
recency: 4,
frequency: 4,
monetary: 4,
totalScore: 12,
},
segment: "中价值活跃用户",
valueEstimation: 2200,
},
]
}
// 定义分群分布的类型
interface SegmentDistribution {
segment: UserSegment
count: number
percentage: number
}
// 分析RFM数据
export const analyzeRFMData = (data: UserRFMData[]): RFMAnalysisResult => {
const userCount = data.length
// 计算平均值
const averageRecency = data.reduce((sum, user) => sum + user.rfmScore.recency, 0) / userCount
const averageFrequency = data.reduce((sum, user) => sum + user.rfmScore.frequency, 0) / userCount
const averageMonetary = data.reduce((sum, user) => sum + user.rfmScore.monetary, 0) / userCount
// 计算总估值和平均估值
const totalValueEstimation = data.reduce((sum, user) => sum + user.valueEstimation, 0)
const averageValueEstimation = totalValueEstimation / userCount
// 计算分群分布
const segmentCounts: Record<UserSegment, number> = {} as Record<UserSegment, number>
data.forEach((user) => {
segmentCounts[user.segment] = (segmentCounts[user.segment] || 0) + 1
})
const segmentDistribution: SegmentDistribution[] = Object.entries(segmentCounts)
.map(([segment, count]) => ({
segment: segment as UserSegment,
count,
percentage: (count / userCount) * 100,
}))
.sort((a, b) => b.count - a.count)
return {
userCount,
averageRecency,
averageFrequency,
averageMonetary,
segmentDistribution,
totalValueEstimation,
averageValueEstimation,
}
}
// 过滤用户数据
export const filterUserData = (data: UserRFMData[], options: UserFilterOptions): UserRFMData[] => {
return data.filter((user) => {
// 分群过滤
if (options.segments.length > 0 && !options.segments.includes(user.segment)) {
return false
}
// 日期范围过滤
if (options.dateRange.start && options.dateRange.end) {
const userDate = new Date(user.lastPurchaseDate)
const startDate = new Date(options.dateRange.start)
const endDate = new Date(options.dateRange.end)
if (userDate < startDate || userDate > endDate) {
return false
}
}
// 价值范围过滤
if (options.valueRange.min !== undefined && options.valueRange.max !== undefined) {
if (user.valueEstimation < options.valueRange.min || user.valueEstimation > options.valueRange.max) {
return false
}
}
return true
})
}
// 比较两个时间段的数据
export const compareDataPeriods = (beforeData: UserRFMData[], afterData: UserRFMData[]): DataComparisonResult[] => {
const segments: UserSegment[] = [
"高价值活跃用户",
"高价值流失风险用户",
"高价值沉睡用户",
"中价值活跃用户",
"中价值流失风险用户",
"中价值沉睡用户",
"低价值活跃用户",
"低价值流失风险用户",
"低价值沉睡用户",
"新用户",
]
return segments
.map((segment) => {
const beforeSegment = beforeData.filter((user) => user.segment === segment)
const afterSegment = afterData.filter((user) => user.segment === segment)
const beforeCount = beforeSegment.length
const afterCount = afterSegment.length
const beforeValue = beforeSegment.reduce((sum, user) => sum + user.valueEstimation, 0)
const afterValue = afterSegment.reduce((sum, user) => sum + user.valueEstimation, 0)
const changePercentage =
beforeCount === 0 ? (afterCount === 0 ? 0 : 100) : ((afterCount - beforeCount) / beforeCount) * 100
const valueChangePercentage =
beforeValue === 0 ? (afterValue === 0 ? 0 : 100) : ((afterValue - beforeValue) / beforeValue) * 100
return {
segment,
beforeCount,
afterCount,
changePercentage,
beforeValue,
afterValue,
valueChangePercentage,
}
})
.filter((result) => result.beforeCount > 0 || result.afterCount > 0)
}