Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I have tick data on a stock and I would like to aggregate the data by fixed intervals of 30 minutes that starts at 7:00am and end at 5:00pm.

For each 30 minutes clusters, I would like to have the beginning price and ending price, the high, the low, the total volume and the total traded amount. Also, I would like to drop the empty clusters. I would like to visualize the data with candlesticks (quantmod), but I keep getting stuck. Is possible to code it using base R functions?

I have included my code, along with the dataset I have used. Thank you for you help.

Here is my code:

#load data
data1<-read.table("EKSO.txt",header=T,sep=",",stringsAsFactors=F)

#calculate total traded
data1["TT"]<-data1$Price*data1$Size

#combine and convert date and time
data1$Date <- strptime(paste(data1$Date, data1$Time), "%m/%d/%Y %H:%M:%S")

#remove Time columns
data1<-data1[-2]

#create a sequence of 30 minutes time windows
seq1<-seq(as.POSIXct("2014-02-7 7:00:00"), as.POSIXct("2014-02-21 17:00:00"), by="30 mins")

#find the maximum value for each time cluster
data2<-aggregate(data1,list=seq1,max)

#find the minimum value for each time cluster

#find the open and close for each time cluster

#drop each empty clusters

here is the dataset:

Date,Time,Price,Size
02/07/2014,09:30:01,3,500
02/07/2014,09:30:29,3,42
02/07/2014,09:35:56,3,100
02/07/2014,09:37:17,3,100
02/07/2014,09:37:28,3.2,900
02/07/2014,09:37:35,3.2,4900
02/07/2014,09:37:51,3.2,1000
02/07/2014,09:42:11,3.2,500
02/07/2014,10:00:31,3,2400
02/07/2014,10:00:37,3.2,500
02/07/2014,10:00:44,3.2,3347
02/07/2014,10:07:33,3.2,1000
02/07/2014,10:31:42,3.24,1000
02/07/2014,10:33:44,3.24,200
02/07/2014,10:40:28,3.25,300
02/07/2014,10:49:57,3.25,600
02/07/2014,10:53:16,3.25,100
02/07/2014,10:53:32,3.4,1000
02/07/2014,10:54:13,3.4,500
02/07/2014,11:05:37,3.35,1000
02/07/2014,11:11:29,3.25,600
02/07/2014,11:15:26,3.3,60
02/07/2014,11:19:16,3.3,23
02/07/2014,11:21:14,3.25,100
02/07/2014,11:21:22,3.25,100
02/07/2014,11:21:30,3.2,500
02/07/2014,11:21:35,3.2,500
02/07/2014,11:21:43,3.2,500
02/07/2014,11:29:58,3.1,200
02/07/2014,11:35:42,3.19,360
02/07/2014,11:39:51,3.19,1000
02/07/2014,11:52:39,3.15,200
02/07/2014,11:53:51,3.15,100
02/07/2014,11:55:11,3.2,100
02/07/2014,12:17:32,3.2,1500
02/07/2014,12:35:42,3.24,1200
02/07/2014,12:37:53,3.24,100
02/07/2014,12:38:02,3.24,3500
02/07/2014,12:53:57,3.24,400
02/07/2014,13:10:57,3.239,100
02/07/2014,13:11:35,3.24,800
02/07/2014,13:13:41,3.24,1000
02/07/2014,13:39:40,3.24,450
02/07/2014,13:56:04,3.24,500
02/07/2014,14:09:49,3.24,600
02/07/2014,14:11:25,3.24,1000
02/07/2014,14:25:53,3.24,25
02/07/2014,14:30:58,3.24,30
02/07/2014,14:31:36,3.24,30
02/07/2014,14:32:12,3.24,30
02/07/2014,14:33:00,3.24,100
02/07/2014,14:34:49,3.24,1100
02/07/2014,14:36:02,3.24,2000
02/07/2014,14:37:07,3.22,1500
02/07/2014,14:42:30,3.22,3300
02/07/2014,14:42:46,3.22,100
02/07/2014,14:42:54,3.2,1000
02/07/2014,14:53:13,3.23,240
02/07/2014,14:53:27,3.24,500
02/07/2014,14:53:59,3.24,60
02/07/2014,14:54:46,3.2,1500
02/07/2014,14:57:45,3.2,160
02/07/2014,14:57:46,3.2,125
02/07/2014,14:57:54,3.2,100
02/07/2014,15:05:56,3.19,100
02/07/2014,15:22:21,3.19,300
02/07/2014,15:22:28,3.18,150
02/07/2014,15:23:09,3.19,2000
02/07/2014,15:35:23,3.18,1500
02/07/2014,15:44:36,3.18,600
02/10/2014,09:30:02,3.25,100
02/10/2014,09:30:02,3.25,25
02/10/2014,09:30:24,3.25,150
02/10/2014,09:30:40,3.25,100
02/10/2014,09:31:11,3.25,650
02/10/2014,09:35:32,3.24,200
02/10/2014,09:37:59,3.19,100
02/10/2014,09:38:01,3.2,2000
02/10/2014,09:38:09,3.18,185
02/10/2014,09:38:36,3.18,500
02/10/2014,09:39:13,3.18,1042
02/10/2014,09:39:18,3.18,156
02/10/2014,09:39:18,3.17,20
02/10/2014,09:41:24,3.15,100
02/10/2014,09:42:28,3.15,1000
02/10/2014,09:42:28,3.15,1000
02/10/2014,09:42:41,3.15,500
02/10/2014,09:42:57,3.15,100
02/10/2014,09:43:24,3.12,500
02/10/2014,09:43:29,3.12,100
02/10/2014,09:43:32,3.1,5000
02/10/2014,09:44:02,3.1,500
02/10/2014,09:44:19,3.1,500
02/10/2014,09:44:22,3.09,100
02/10/2014,09:44:22,3.09,96
02/10/2014,09:44:55,3.05,100
02/10/2014,09:45:11,3.05,676
02/10/2014,09:45:23,3,150
02/10/2014,09:45:44,2.95,1000
02/10/2014,09:45:53,2.95,1500
02/10/2014,09:47:17,2.95,100
02/10/2014,09:47:46,2.9,100
02/10/2014,09:48:24,2.9,500
02/10/2014,09:48:50,2.9,100
02/10/2014,09:49:11,2.85,386
02/10/2014,09:49:13,2.85,100
02/10/2014,09:49:14,2.8,200
02/10/2014,09:49:15,2.7,100
02/10/2014,09:49:22,2.7,100
02/10/2014,09:49:32,2.7,100
02/10/2014,09:50:09,2.65,2500
02/10/2014,09:50:44,2.66,2500
02/10/2014,09:50:49,2.6,100
02/10/2014,09:50:53,2.7,240
02/10/2014,09:50:54,2.61,1000
02/10/2014,09:50:58,2.65,414
02/10/2014,09:55:24,2.95,100
02/10/2014,09:57:22,2.95,400
02/10/2014,10:07:21,2.95,400
02/10/2014,10:16:28,2.95,250
02/10/2014,10:21:20,2.85,300
02/10/2014,10:32:40,2.94,100
02/10/2014,10:33:18,2.95,426
02/10/2014,10:33:38,2.95,70
02/10/2014,10:33:39,2.94,1900
02/10/2014,10:43:46,2.95,4500
02/10/2014,10:44:00,2.99,200
02/10/2014,10:44:20,2.99,505
02/10/2014,10:49:30,2.96,500
02/10/2014,10:57:22,2.95,2500
02/10/2014,10:57:25,2.95,500
02/10/2014,10:57:40,2.95,500
02/10/2014,11:38:29,3,500
02/10/2014,11:38:35,3.05,500
02/10/2014,11:38:45,3.1,1000
02/10/2014,11:45:08,3.05,100
02/10/2014,11:49:55,3.01,100
02/10/2014,11:50:14,3,1900
02/10/2014,11:50:18,3,100
02/10/2014,12:07:51,3,1000
02/10/2014,12:33:26,3,400
02/10/2014,13:57:20,3.1,150
02/10/2014,13:57:34,3,42
02/10/2014,14:21:42,3.15,500
02/10/2014,14:23:35,3.15,1000
02/10/2014,14:25:40,3.05,200
02/10/2014,14:26:01,3.15,100
02/10/2014,14:50:50,3.15,100
02/10/2014,14:51:00,3.1,100
02/10/2014,14:51:09,3.1,100
02/10/2014,14:51:24,3.05,500
02/10/2014,14:51:43,3,100
02/10/2014,14:52:04,2.95,100
02/10/2014,14:52:15,2.99,25
02/10/2014,14:52:17,2.95,100
02/10/2014,14:52:33,2.9,500
02/10/2014,14:52:47,2.95,600
02/10/2014,14:52:49,2.85,100
02/10/2014,14:52:51,2.85,1000
02/10/2014,14:53:08,2.82,500
02/10/2014,14:53:24,2.85,500
02/10/2014,14:53:43,2.84,5400
02/10/2014,14:53:48,2.85,100
02/10/2014,15:00:48,2.99,64
02/10/2014,15:04:08,2.99,412
02/10/2014,15:11:42,2.99,100
02/10/2014,15:11:46,2.99,100
02/10/2014,15:12:06,2.99,100
02/10/2014,15:20:35,3.04,500
02/10/2014,15:30:28,3,500
02/10/2014,15:36:58,2.95,2000
02/10/2014,15:38:09,3,550
02/10/2014,15:39:48,2.97,2000
02/11/2014,09:30:04,3.2,100
02/11/2014,09:30:18,3.2,2000
02/11/2014,10:03:07,3.18,1000
02/11/2014,10:21:35,3.18,26
02/11/2014,10:27:09,3.15,500
02/11/2014,10:37:22,3.15,1108
02/11/2014,10:37:22,3.15,1054
02/11/2014,10:37:23,3.1,100
02/11/2014,10:42:26,3.05,1000
02/11/2014,10:42:57,3.02,1000
02/11/2014,10:43:29,3.02,1000
02/11/2014,10:48:27,3.02,100
02/11/2014,10:50:36,3.01,1000
02/11/2014,10:51:33,3.01,1000
02/11/2014,10:51:43,3.01,1000
02/11/2014,10:52:17,3.01,1000
02/11/2014,10:53:55,3.01,500
02/11/2014,10:54:31,3.05,40
02/11/2014,10:55:41,3.01,100
02/11/2014,10:55:44,3,3300
02/11/2014,10:55:44,3,100
02/11/2014,10:55:44,3,5000
02/11/2014,10:55:44,3,230
02/11/2014,10:56:21,3,100
02/11/2014,11:01:20,3,100
02/11/2014,11:01:21,3,50
02/11/2014,11:17:30,2.99,600
02/11/2014,11:17:34,3,500
02/11/2014,11:18:49,2.99,3000
02/11/2014,11:25:55,3.03,500
02/11/2014,11:29:59,2.99,400
02/11/2014,11:30:08,2.99,100
02/11/2014,11:30:18,2.99,100
02/11/2014,11:30:46,2.99,200
02/11/2014,11:38:48,2.95,100
02/11/2014,11:44:55,2.98,325
02/11/2014,12:32:09,3,500
02/11/2014,12:32:55,3,50
02/11/2014,13:15:49,3.1,1000
02/11/2014,14:16:16,3.05,350
02/11/2014,14:29:12,2.99,650
02/11/2014,14:32:23,2.99,335
02/11/2014,14:32:29,2.99,500
02/11/2014,15:25:01,3,1000
02/11/2014,15:49:37,3,500
02/11/2014,15:51:08,2.98,300
02/12/2014,08:46:23,3,1500
02/12/2014,09:10:01,3,2000
02/12/2014,09:21:31,3.1,1500
02/12/2014,09:26:33,3.2,2000
02/12/2014,09:27:58,3.2,2500
02/12/2014,09:30:00,3.2,2000
02/12/2014,09:30:00,3.2,10000
02/12/2014,09:30:01,3.2,500
02/12/2014,09:30:02,3.2,30
02/12/2014,09:30:18,3.2,30
02/12/2014,09:40:51,3.05,100
02/12/2014,09:40:52,3.05,1250
02/12/2014,09:41:01,3.05,806
02/12/2014,09:41:11,3,100
02/12/2014,09:43:48,2.98,1000
02/12/2014,09:44:22,3,4000
02/12/2014,09:44:27,2.98,1000
02/12/2014,09:44:31,2.98,2900
02/12/2014,09:47:43,2.98,110
02/12/2014,09:50:49,2.96,100
02/12/2014,09:50:51,2.8,750
02/12/2014,09:51:11,2.95,100
02/12/2014,09:55:35,2.95,1050
02/12/2014,09:55:56,2.95,100
02/12/2014,09:56:29,3,100
02/12/2014,09:56:43,3,100
02/12/2014,09:57:33,3.05,100
02/12/2014,10:04:50,2.85,2073
02/12/2014,10:09:33,3,500
02/12/2014,10:10:57,3.05,1000
02/12/2014,10:14:16,3.015,1500
02/12/2014,10:15:30,3,100
02/12/2014,10:15:38,2.85,2567
share|improve this question
    
Does this SO thread help? stackoverflow.com/questions/3629550/15min-time-aggregation-in-r – hrbrmstr May 5 '14 at 1:28
    
    
I know you want to do this with base R, but xts really makes it easy. If x is an xts object, x <- x[T07:00/T17:00] would subset to only those times of they day. to.minutes30(x) or to.period(x, "minutes", 30) would convert to OHLC bars. (if you changed the column name "Size" to "Volume" first, you'd get OHLCV) – GSee May 5 '14 at 1:53
up vote 2 down vote accepted

Here's one possibility using base functions. Picking up from after removing the time columns...

#Use cut.POSIXt to create 30min intervals
minints<-cut(data1$Date, breaks="30 min")

#find min/max with tapply
openPrice<-with(data1, unname(tapply(Price,minints,head,1)))
closePrice<-with(data1, unname(tapply(Price,minints,tail,1)))
minPrice<-with(data1, unname(tapply(Price,minints,min)))
maxPrice<-with(data1, unname(tapply(Price,minints,max)))
totTrade<-with(data1, unname(tapply(TT,minints,sum)))

#store results
data2<-data.frame(intstart=as.POSIXct(levels(minints)),minPrice,maxPrice, totTrade, openPrice, closePrice)

#drop empty intervals
data2<-data2[complete.cases(data2),]
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.