RGui的arules程序包里含有Groceries数据集,该数据集是某个杂货店一个月真实的交易记录,共有9835条消费记录,169个商品

#install.packages("arules")
library(arules)
setwd('D:\\data') #读入数据
#Groceries数据集
Groceries
groceries<-read.transactions("groceries.txt",format="basket",sep=",")#查看groceries中的数据
summary(groceries)
class(groceries)
groceries
dim(groceries)colnames(groceries)[1:5]
#rownames(groceries)[1:5]
basketSize<-size(groceries)
summary(basketSize)
sum(basketSize)#size函数和itemFrequency函数都是arules包中的函数,前者是为了计算购物篮里商品数量,后者是为了计算每种商品的支持度
itemFreq<-itemFrequency(groceries)
itemFreq[1:5]
sum(itemFreq)
itemCount<-(itemFreq/sum(itemFreq))*sum(basketSize)
summary(itemCount)#按支持度itemFrequency排序,查看支持度的最大值
orderedItem<-sort(itemCount,decreasing=T)
orderedItem[1:10]
orderedItemFreq<-sort(itemFrequency(groceries),decreasing=T)
orderedItemFreq[1:10]
#切除第100行到800行,计算第1列到第3列的支持度
itemFrequency(groceries[100:800,1:3])#itemFrequencyPlot 画频繁项的图#按最小支持度查看
itemFrequencyPlot(groceries,support=0.1)
#按照排序查看
itemFrequencyPlot(groceries,topN=10,horiz=T)#只关心购买两件商品以上的交易
groceries_use<-groceries[basketSize>1]
dim(groceries_use)inspect(groceries[1:5])
#一个点代表在某个transaction上购买了item。
image(groceries[1:10])
#当数据集很大的时候,这张稀疏矩阵图是很难展现的,一般可以用sample函数进行采样显示
image(sample(groceries,100))groceryrules<-apriori(groceries,parameter=list(support=0.03,confidence=0.25,minlen=2))
summary(groceryrules)#inspect查看具体的规则
inspect(groceryrules[1:5])
inspect(groceryrules)#按照某种度量,对规则进行排序。
ordered_groceryrules<-sort(groceryrules,by="lift")
inspect(ordered_groceryrules[1:5])yogurtrules<-subset(groceryrules,items%in%c("yogurt"))
inspect(yogurtrules)
fruitrules<-subset(groceryrules,items%pin%c("fruit"))
inspect(fruitrules)
byrules<-subset(groceryrules,items%ain%c("berries","yogurt"))
inspect(byrules)fruitrules<-subset(groceryrules,items%pin%c("fruit")&lift>2)
inspect(fruitrules)
berriesInLHS<-apriori(groceries,parameter=list(support=0.001,confidence=0.1),appearance=list(lhs=c("berries"),default="rhs"))
summary(berriesInLHS)
inspect(berriesInLHS)
inspect(head(rhs(berriesInLHS),n=5))berrySub<-subset(berriesInLHS,subset=!(rhs%in%c("root vegetables","whole milk")))
inspect(head(rhs(sort(berrySub,by="confidence")),n=5))
write(groceryrules,file="groceryrules.csv",sep=",",quote=TRUE,row.names=FALSE)
groceryrules_df<-as(groceryrules,"data.frame")
str(groceryrules_df)
data(Groceries)
summary(Groceries)
print(levels(itemInfo(Groceries)[["level1"]]))
print(levels(itemInfo(Groceries)[["level2"]]))
inspect(Groceries[1:3])
groceries=aggregate(Groceries,itemInfo(Groceries)[["level2"]])
inspect(groceries[1:3])
itemFrequencyPlot(Groceries,support=0.025,cex.names=0.8,xlim=c(0,0.3),type="relative",horiz=TRUE,col="darkred",las=1,xlab=paste("ProportionofMarketBasketsContainingItem","\n(ItemRelativeFrequencyorSupport)"))
second.rules<-apriori(groceries,parameter=list(support=0.025,confidence=0.05))
print(summary(second.rules))
install.packages("RColorBrewer")
install.packages("arulesViz")
#library(RColorBrewer)
#library(arulesViz)
inspect(second.rules)
plot(second.rules,control=list(jitter=2,col=rev(brewer.pal(9,"Greens")[4:9])),shading="lift")plot(second.rules,measure="confidence",method="graph",control=list(type="items"),shading="lift")
plot(second.rules,method="grouped",control=list(col=rev(brewer.pal(9,"Greens")[4:9])))
groceryrules.eclat<-eclat(groceries,parameter=list(support=0.05,minlen=2))
summary(groceryrules.eclat)
inspect(groceryrules.eclat)

Gary.R

一. 加载数据集

  查看groceries中的数据

> summary(groceries)
transactions as itemMatrix in sparse format with9835 rows (elements/itemsets/transactions) and169 columns (items) and a density of 0.02609146 most frequent items:whole milk other vegetables       rolls/buns             soda           yogurt          (Other) 2513             1903             1809             1715             1372            34055 element (itemset/transaction) length distribution:
sizes1    2    3    4    5    6    7    8    9   10   11   12   13   14   15   16   17   18   19   20   21   22   23
2159 1643 1299 1005  855  645  545  438  350  246  182  117   78   77   55   46   29   14   14    9   11    4    6 24   26   27   28   29   32 1    1    1    1    3    1 Min. 1st Qu.  Median    Mean 3rd Qu.    Max. 1.000   2.000   3.000   4.409   6.000  32.000 includes extended item information - examples:labels
1 abrasive cleaner
2 artif. sweetener
3   baby cosmetics
> class(groceries)
[1] "transactions"
attr(,"package")
[1] "arules"
> groceries
transactions in sparse format with9835 transactions (rows) and169 items (columns)
> dim(groceries)
[1] 9835  169

二. 对数据集进行处理分析

  对groceries中的数据进行统计

> colnames(groceries)[1:5]
[1] "abrasive cleaner" "artif. sweetener" "baby cosmetics"   "baby food"        "bags"
> #rownames(groceries)[1:5]
> basketSize<-size(groceries)
> summary(basketSize)Min. 1st Qu.  Median    Mean 3rd Qu.    Max. 1.000   2.000   3.000   4.409   6.000  32.000
> sum(basketSize)
[1] 43367

  统计groceries数据中的支持度

> itemFreq<-itemFrequency(groceries)
> itemFreq[1:5]
abrasive cleaner artif. sweetener   baby cosmetics        baby food             bags 0.0035587189     0.0032536858     0.0006100661     0.0001016777     0.0004067107
> sum(itemFreq)
[1] 4.409456        #代表"平均一个transaction购买的item个数"#查看basketSize的分布:密度曲线(TO ADD HERE)  
> itemCount<-(itemFreq/sum(itemFreq))*sum(basketSize)
> summary(itemCount)Min. 1st Qu.  Median    Mean 3rd Qu.    Max. 1.0    38.0   103.0   256.6   305.0  2513.0

  按支持度itemFrequency排序,查看支持度的最大值

> orderedItem<-sort(itemCount,decreasing=T)
> orderedItem[1:10]whole milk other vegetables       rolls/buns             soda           yogurt    bottled water 2513             1903             1809             1715             1372             1087 root vegetables   tropical fruit    shopping bags          sausage 1072             1032              969              924
> orderedItemFreq<-sort(itemFrequency(groceries),decreasing=T)
> orderedItemFreq[1:10]whole milk other vegetables       rolls/buns             soda           yogurt    bottled water 0.25551601       0.19349263       0.18393493       0.17437722       0.13950178       0.11052364 root vegetables   tropical fruit    shopping bags          sausage 0.10899847       0.10493137       0.09852567       0.09395018
#切除第100行到800行,计算第1列到第3列的支持度
> itemFrequency(groceries[100:800,1:3])
abrasive cleaner artif. sweetener   baby cosmetics 0.005706134      0.001426534      0.001426534 

  使用itemFrequencyPlot 画频繁项的图

#按最小支持度查看
itemFrequencyPlot(groceries,support=0.1)

  

#按照排序查看
itemFrequencyPlot(groceries,topN=10,horiz=T)

  

  根据业务对数据集进行过滤,获得进一步规则挖掘的数据集

> #只关心购买两件商品以上的交易
> groceries_use<-groceries[basketSize>1]
> dim(groceries_use)
[1] 7676  169

  通过图形更直观观测数据的稀疏情况

> inspect(groceries[1:5])items
[1] {citrus fruit,margarine,ready soups,semi-finished bread}
[2] {coffee,tropical fruit,yogurt}
[3] {whole milk}
[4] {cream cheese,meat spreads,pip fruit,yogurt}
[5] {condensed milk,long life bakery product,other vegetables,whole milk}
#一个点代表在某个transaction上购买了item。
> image(groceries[1:10])

  

#当数据集很大的时候,这张稀疏矩阵图是很难展现的,一般可以用sample函数进行采样显示
image(sample(groceries,100))

  

三、对数据集进行规则挖掘

apriori函数

  

> summary(groceryrules)
set of 15 rulesrule length distribution (lhs + rhs):sizes2
15 Min. 1st Qu.  Median    Mean 3rd Qu.    Max. 2       2       2       2       2       2 summary of quality measures:support          confidence          lift           count      Min.   :0.03010   Min.   :0.2929   Min.   :1.205   Min.   :296.0  1st Qu.:0.03274   1st Qu.:0.3185   1st Qu.:1.488   1st Qu.:322.0  Median :0.04230   Median :0.3737   Median :1.572   Median :416.0    中位数:0.04230中位数:0.3737中位数:1.572中位数:416Mean   :0.04475   Mean   :0.3704   Mean   :1.598   Mean   :440.1  3rd Qu.:0.05247   3rd Qu.:0.4024   3rd Qu.:1.758   3rd Qu.:516.0  Max.   :0.07483   Max.   :0.4496   Max.   :2.247   Max.   :736.0    Max.:0.07483个最大值:0.4496个最大值:2.247个最大值:736mining info:data ntransactions support confidencegroceries          9835    0.03       0.25

> #inspect查看具体的规则
> inspect(groceryrules[1:5])lhs                     rhs          support    confidence lift     count
[1] {whipped/sour cream} => {whole milk} 0.03223183 0.4496454  1.759754 317
[2] {pip fruit}          => {whole milk} 0.03009659 0.3978495  1.557043 296
[3] {pastry}             => {whole milk} 0.03324860 0.3737143  1.462587 327
[4] {citrus fruit}       => {whole milk} 0.03050330 0.3685504  1.442377 300
[5] {sausage}            => {rolls/buns} 0.03060498 0.3257576  1.771048 301
> inspect(groceryrules)lhs                     rhs                support    confidence lift     count
[1]  {whipped/sour cream} => {whole milk}       0.03223183 0.4496454  1.759754 317
[2]  {pip fruit}          => {whole milk}       0.03009659 0.3978495  1.557043 296
[3]  {pastry}             => {whole milk}       0.03324860 0.3737143  1.462587 327
[4]  {citrus fruit}       => {whole milk}       0.03050330 0.3685504  1.442377 300
[5]  {sausage}            => {rolls/buns}       0.03060498 0.3257576  1.771048 301
[6]  {bottled water}      => {whole milk}       0.03436706 0.3109476  1.216940 338
[7]  {tropical fruit}     => {other vegetables} 0.03589222 0.3420543  1.767790 353
[8]  {tropical fruit}     => {whole milk}       0.04229792 0.4031008  1.577595 416
[9]  {root vegetables}    => {other vegetables} 0.04738180 0.4347015  2.246605 466
[10] {root vegetables}    => {whole milk}       0.04890696 0.4486940  1.756031 481
[11] {yogurt}             => {other vegetables} 0.04341637 0.3112245  1.608457 427
[12] {yogurt}             => {whole milk}       0.05602440 0.4016035  1.571735 551
[13] {rolls/buns}         => {whole milk}       0.05663447 0.3079049  1.205032 557
[14] {other vegetables}   => {whole milk}       0.07483477 0.3867578  1.513634 736
[15] {whole milk}         => {other vegetables} 0.07483477 0.2928770  1.513634 736  

四. 对数据集进行评估规则

规则可以划分为3大类:

  • Actionable

    • 这些rule提供了非常清晰、有用的洞察,可以直接应用在业务上。
  • Trivial
    • 这些rule显而易见,很清晰但是没啥用。属于common sense,如 {尿布} => {婴儿食品}。
  • Inexplicable
    • 这些rule是不清晰的,难以解释,需要额外的研究来判定是否是有用的rule。
> #按照某种度量,对规则进行排序。
> ordered_groceryrules<-sort(groceryrules,by="lift")
> inspect(ordered_groceryrules[1:5])lhs                     rhs                support    confidence lift     count
[1] {root vegetables}    => {other vegetables} 0.04738180 0.4347015  2.246605 466
[2] {sausage}            => {rolls/buns}       0.03060498 0.3257576  1.771048 301
[3] {tropical fruit}     => {other vegetables} 0.03589222 0.3420543  1.767790 353
[4] {whipped/sour cream} => {whole milk}       0.03223183 0.4496454  1.759754 317
[5] {root vegetables}    => {whole milk}       0.04890696 0.4486940  1.756031 481 

  

搜索规则

> yogurtrules<-subset(groceryrules,items%in%c("yogurt"))
> inspect(yogurtrules)lhs         rhs                support    confidence lift     count
[1] {yogurt} => {other vegetables} 0.04341637 0.3112245  1.608457 427
[2] {yogurt} => {whole milk}       0.05602440 0.4016035  1.571735 551
> fruitrules<-subset(groceryrules,items%pin%c("fruit"))
> inspect(fruitrules)lhs                 rhs                support    confidence lift     count
[1] {pip fruit}      => {whole milk}       0.03009659 0.3978495  1.557043 296
[2] {citrus fruit}   => {whole milk}       0.03050330 0.3685504  1.442377 300
[3] {tropical fruit} => {other vegetables} 0.03589222 0.3420543  1.767790 353
[4] {tropical fruit} => {whole milk}       0.04229792 0.4031008  1.577595 416
> byrules<-subset(groceryrules,items%ain%c("berries","yogurt"))
> inspect(byrules)

  items %in% c("A", "B")表示 lhs+rhs的项集并集中,至少有一个item是在c("A", "B")。  item = Aor item = B

  如果仅仅想搜索lhs或者rhs,那么用lhs或rhs替换items即可。如:lhs %in% c("yogurt")

    %in%是精确匹配

    %pin%是部分匹配,也就是说只要item like '%A%' or item like '%B%'

    %ain%是完全匹配,也就是说itemset has ’A' and itemset has ‘B'

  同时可以通过 条件运算符(&, |, !) 添加 support, confidence, lift的过滤条件。

> yogurtrules<-subset(groceryrules,items%in%c("yogurt"))
> inspect(yogurtrules)lhs         rhs                support    confidence lift     count
[1] {yogurt} => {other vegetables} 0.04341637 0.3112245  1.608457 427
[2] {yogurt} => {whole milk}       0.05602440 0.4016035  1.571735 551
> fruitrules<-subset(groceryrules,items%pin%c("fruit"))
> inspect(fruitrules)lhs                 rhs                support    confidence lift     count
[1] {pip fruit}      => {whole milk}       0.03009659 0.3978495  1.557043 296
[2] {citrus fruit}   => {whole milk}       0.03050330 0.3685504  1.442377 300
[3] {tropical fruit} => {other vegetables} 0.03589222 0.3420543  1.767790 353
[4] {tropical fruit} => {whole milk}       0.04229792 0.4031008  1.577595 416
> byrules<-subset(groceryrules,items%ain%c("berries","yogurt"))
> inspect(byrules)
>
> fruitrules<-subset(groceryrules,items%pin%c("fruit")&lift>2)
> inspect(fruitrules)
> berriesInLHS<-apriori(groceries,parameter=list(support=0.001,confidence=0.1),appearance=list(lhs=c("berries"),default="rhs"))
AprioriParameter specification:confidence minval smax arem  aval originalSupport maxtime support minlen maxlen target   ext0.1    0.1    1 none FALSE            TRUE       5   0.001      1     10  rules FALSEAlgorithmic control:filter tree heap memopt load sort verbose0.1 TRUE TRUE  FALSE TRUE    2    TRUEAbsolute minimum support count: 9 set item appearances ...[1 item(s)] done [0.00s].
set transactions ...[169 item(s), 9835 transaction(s)] done [0.01s].
sorting and recoding items ... [157 item(s)] done [0.00s].
creating transaction tree ... done [0.01s].
checking subsets of size 1 2 done [0.00s].
writing ... [26 rule(s)] done [0.00s].
creating S4 object  ... done [0.01s].
> summary(berriesInLHS)
set of 26 rulesrule length distribution (lhs + rhs):sizes1  2 8 18 Min. 1st Qu.  Median    Mean 3rd Qu.    Max. 1.000   1.000   2.000   1.692   2.000   2.000 summary of quality measures:support           confidence          lift           count        Min.   :0.003660   Min.   :0.1049   Min.   :1.000   Min.   :  36.00  1st Qu.:0.004601   1st Qu.:0.1177   1st Qu.:1.000   1st Qu.:  45.25  Median :0.007016   Median :0.1560   Median :1.470   Median :  69.00  Mean   :0.053209   Mean   :0.1786   Mean   :1.547   Mean   : 523.31  3rd Qu.:0.107982   3rd Qu.:0.2011   3rd Qu.:1.830   3rd Qu.:1062.00  Max.   :0.255516   Max.   :0.3547   Max.   :3.797   Max.   :2513.00  mining info:data ntransactions support confidencegroceries          9835   0.001        0.1
> inspect(berriesInLHS)lhs          rhs                     support     confidence lift     count
[1]  {}        => {bottled water}         0.110523640 0.1105236  1.000000 1087
[2]  {}        => {tropical fruit}        0.104931368 0.1049314  1.000000 1032
[3]  {}        => {root vegetables}       0.108998475 0.1089985  1.000000 1072
[4]  {}        => {soda}                  0.174377224 0.1743772  1.000000 1715
[5]  {}        => {yogurt}                0.139501779 0.1395018  1.000000 1372
[6]  {}        => {rolls/buns}            0.183934926 0.1839349  1.000000 1809
[7]  {}        => {other vegetables}      0.193492628 0.1934926  1.000000 1903
[8]  {}        => {whole milk}            0.255516014 0.2555160  1.000000 2513
[9]  {berries} => {beef}                  0.004473818 0.1345566  2.564659   44
[10] {berries} => {butter}                0.003762074 0.1131498  2.041888   37
[11] {berries} => {domestic eggs}         0.003863752 0.1162080  1.831579   38
[12] {berries} => {fruit/vegetable juice} 0.003660397 0.1100917  1.522858   36
[13] {berries} => {whipped/sour cream}    0.009049314 0.2721713  3.796886   89
[14] {berries} => {pip fruit}             0.003762074 0.1131498  1.495738   37
[15] {berries} => {pastry}                0.004270463 0.1284404  1.443670   42
[16] {berries} => {citrus fruit}          0.005388917 0.1620795  1.958295   53
[17] {berries} => {shopping bags}         0.004982206 0.1498471  1.520894   49
[18] {berries} => {sausage}               0.004982206 0.1498471  1.594963   49
[19] {berries} => {bottled water}         0.004067107 0.1223242  1.106769   40
[20] {berries} => {tropical fruit}        0.006710727 0.2018349  1.923494   66
[21] {berries} => {root vegetables}       0.006609049 0.1987768  1.823666   65
[22] {berries} => {soda}                  0.007320793 0.2201835  1.262685   72
[23] {berries} => {yogurt}                0.010574479 0.3180428  2.279848  104
[24] {berries} => {rolls/buns}            0.006609049 0.1987768  1.080691   65
[25] {berries} => {other vegetables}      0.010269446 0.3088685  1.596280  101
[26] {berries} => {whole milk}            0.011794611 0.3547401  1.388328  116
> inspect(head(rhs(berriesInLHS),n=5))items
[1] {bottled water}
[2] {tropical fruit}
[3] {root vegetables}
[4] {soda}
[5] {yogurt}         

限制挖掘的item

  可以控制规则的左手边或者右手边出现的item,即appearance。但尽量要放低支持度和置信度。

berrySub<-subset(berriesInLHS,subset=!(rhs%in%c("root vegetables","whole milk")))
inspect(head(rhs(sort(berrySub,by="confidence")),n=5))
write(groceryrules,file="groceryrules.csv",sep=",",quote=TRUE,row.names=FALSE)
groceryrules_df<-as(groceryrules,"data.frame")
str(groceryrules_df)
data(Groceries)
summary(Groceries)
print(levels(itemInfo(Groceries)[["level1"]]))
print(levels(itemInfo(Groceries)[["level2"]]))
inspect(Groceries[1:3])
groceries=aggregate(Groceries,itemInfo(Groceries)[["level2"]])
inspect(groceries[1:3])
itemFrequencyPlot(Groceries,support=0.025,cex.names=0.8,xlim=c(0,0.3),type="relative",horiz=TRUE,col="darkred",las=1,xlab=paste("ProportionofMarketBasketsContainingItem","\n(ItemRelativeFrequencyorSupport)"))
second.rules<-apriori(groceries,parameter=list(support=0.025,confidence=0.05))
print(summary(second.rules))

itemFrequency图

               itemFrequencyPlot(Groceries, support = 0.025, cex.names=0.8, xlim = c(0,0.3),  type = "relative", horiz = TRUE, col = "dark red", las = 1,  xlab = paste("Proportionof Market Baskets Containing Item",  "\n(Item Relative Frequency or Support)"))  

  horiz=TRUE: 让柱状图水平显示

  cex.names=0.8:item的label(这个例子即纵轴)的大小乘以的系数。

  s=1: 表示刻度的方向,1表示总是水平方向。

  pe="relative": 即support的值(百分比)。如果type=absolute表示显示该item的count,而非support。默认就是relative。

  

扩展:

#install.packages("RColorBrewer")
#install.packages("arulesViz")
library(RColorBrewer)
library(arulesViz)
inspect(second.rules)
plot(second.rules,control=list(jitter=2,col=rev(brewer.pal(9,"Greens")[4:9])),shading="lift")plot(second.rules,measure="confidence",method="graph",control=list(type="items"),shading="lift")
plot(second.rules,method="grouped",control=list(col=rev(brewer.pal(9,"Greens")[4:9])))
groceryrules.eclat<-eclat(groceries,parameter=list(support=0.05,minlen=2))
summary(groceryrules.eclat)
inspect(groceryrules.eclat)

2.1 Scatter Plot

library(RColorBrewer)

library(arulesViz)

> plot(second.rules, control=list(jitter=2, col = rev(brewer.pal(9, "Greens")[4:9])), shading = "lift")

shading = "lift": 表示在散点图上颜色深浅的度量是lift。当然也可以设置为support 或者Confidence。

jitter=2:增加抖动值

col: 调色板,默认是100个颜色的灰色调色板。

brewer.pal(n, name): 创建调色板:n表示该调色板内总共有多少种颜色;name表示调色板的名字(参考help)。

这里使用Green这块调色板,引入9中颜色。

这幅散点图表示了规则的分布图:大部分规则的support在0.1以内,Confidence在0-0.8内。每个点的颜色深浅代表了lift的值。

  

2.2 Grouped Matrix

> plot(second.rules, method="grouped", control=list(col = rev(brewer.pal(9, "Greens")[4:9])))

Grouped matrix-based visualization.

Antecedents (columns) in the matrix are grouped using clustering. Groups are represented as balloons in the matrix.

  

2.3 Graph

Represents the rules (or itemsets) as a graph

plot(top.vegie.rules, measure="confidence", method="graph",control=list(type="items"), shading = "lift")

type=items表示每个圆点的入度的item的集合就是LHS的itemset

measure定义了圈圈大小,默认是support

颜色深浅有shading控制

  

转载于:https://www.cnblogs.com/1138720556Gary/p/9893203.html

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