A Time series is a sequence of data points with values measured at successive times (either in continuous time or at discrete time periods). Time series analysis exploits this natural temporal ordering to extract meaning and trends from the underlying data.

learn more… | top users | synonyms

89
votes
8answers
30k views

Storing time-series data, relational or non?

I am creating a system which polls devices for data on varying metrics such as CPU utilisation, disk utilisation, temperature etc. at (probably) 5 minute intervals using SNMP. The ultimate goal is to ...
70
votes
3answers
70k views

Plotting two variables as lines using ggplot2 on the same graph

A very newbish question, but say I have data like this: test_data <- data.frame( var0 = 100 + c(0, cumsum(runif(49, -20, 20))), var1 = 150 + c(0, cumsum(runif(49, -10, 10))), date = ...
42
votes
14answers
12k views

Predict Stock Market Values [closed]

I'm building a web semantic project that gathers the maximum amount of historic data about a certain company and tries to predict its future market stock values. For data I have the historic stock ...
33
votes
3answers
3k views

R data.table sliding window

What is the best (fastest) way to implement a sliding window function with the data.table package? I'm trying to calculate a rolling median but have multiple rows per date (due to 2 additional ...
29
votes
5answers
11k views

storing massive ordered time series data in bigtable derivatives

I am trying to figure out exactly what these new fangled data stores such as bigtable, hbase and cassandra really are. I work with massive amounts of stock market data, billions of rows of ...
25
votes
3answers
22k views

Using JFreeChart to display recent changes in a time series

How can I use JFreeChart to display just the most recent data in a continually updated time series? Addednum: A complete, working example that incorporates the accepted answer is shown here. See also ...
24
votes
7answers
11k views

Is there a powerful database system for time series data? [closed]

In multiple projects we have to store, aggregate, evaluate simple measurement values. One row typcially consists of a time stamp, a value and some attributes to the value. In some applications we ...
22
votes
2answers
11k views

How to parse milliseconds in R?

How do I use strptime or any other functions to parse timestamps with milliseconds in R? > time[1] [1] "2010-01-15 13:55:23.975" > strptime(time[1], format="%Y-%m-%d %H:%M:%S.%f") [1] NA > ...
20
votes
8answers
18k views

Basic lag in R vector/dataframe

Will most likely expose that I am new to R, but in SPSS, running lags is very easy. Obviously this is user error, but what I am missing? x <- sample(c(1:9), 10, replace = T) y <- lag(x, 1) ds ...
19
votes
2answers
16k views

R: Converting a data frame to xts

I'm trying to convert a data frame to xts object using the as.xts()-method. Here is my input dataframe q: q t x 1 2006-01-01 00:00:00 1 2 2006-01-01 01:00:00 2 3 ...
19
votes
1answer
6k views

How to get a vertical geom_vline to an x-axis of class date?

Even though I found Hadley's post in the google group on POSIXct and geom_vline, I could not get it done. I have a time series from and would like to draw a vertical line for years 1998, 2005 and 2010 ...
19
votes
1answer
3k views

rolling joins data.table in R

I am trying to understand a little more about the way rolling joins work and am having some confusion, I was hoping somebody could clarify this for me. To take a concrete example: dt1 <- ...
19
votes
3answers
338 views

Time series forecasting, dealing with known big orders

I have many data sets with known outliers (big orders) data <- ...
19
votes
2answers
3k views

Request for example: Recurrent neural network for predicting next value in a sequence

Can anyone give me a practicale example of a recurrent neural network in (pybrain) python in order to predict the next value of a sequence ? (I've read the pybrain documentation and there is no clear ...
17
votes
5answers
10k views

Time series forecasting (eventually with python)

What algorithms exist for time series forecasting/regression ? What about using neural networks ? (best docs about this topic ?) Are there python libraries/code snippets that can help ?
17
votes
3answers
18k views

Multivariate time series modelling in R

I want do fit some sort of multi-variate time series model using R. Here is a sample of my data: u cci bci cpi gdp dum1 dum2 dum3 dx 16.50 14.00 53.00 45.70 80.63 0 0 1 ...
15
votes
2answers
3k views

Compressing floating point data

Are there any lossless compression methods that can be applied to floating point time-series data, and will significantly outperform, say, writing the data as binary into a file and running it through ...
15
votes
4answers
666 views

What is the quickest/easiest way to count active users in last one minute?

You work for Zynga, and want to count the number of currently active players for different games. Your web server handles pings from many different games and each user has a unique GUID. Must be able ...
14
votes
2answers
19k views

moving average function on numpy/scipy? [closed]

As the title states, there seems to be no function that simply calculates the moving average on numpy/scipy, leading to convoluted solutions. Since this seems such a basic data processing tool, ...
14
votes
4answers
7k views

Which R time/date class and package to use? [closed]

I have a limited time series exposure in R. So, I wonder which time/date class (and associated package) would be most appropriate to start with. Among the plethora of packages available at CRAN ...
14
votes
2answers
9k views

subsetting tricks for xts in R

There are very nifty ways of subsetting xts objects. For example, one can get all the data for all years, months, days but being strictly between 9:30 AM and 4 PM by doing: my_xts["T09:30/T16:00"] ...
14
votes
4answers
11k views

Pandas: rolling mean by time interval

I'm new to Pandas.... I've got a bunch of polling data; I want to compute a rolling mean to get an estimate for each day based on a three-day window. As I understand from this question, the rolling_* ...
14
votes
3answers
9k views

Pattern recognition in time series

By processing a time series graph, I Would like to detect patterns that look similar to this: Using a sample time series as an example, I would like to be able to detect the patterns as marked ...
13
votes
5answers
9k views

What is the best open source solution for storing time series data? [closed]

I am interested in monitoring some objects. I expect to get about 10000 data points every 15 minutes. (Maybe not at first, but this is the 'general ballpark'). I would also like to be able to get ...
13
votes
1answer
8k views

Add Moving average plot to time series plot in R

I have a plot of time series in ggplot2 package and I have performed the Moving average and I would like to add the result of moving average to the plot of time series. Sample of Data-set (p31): ...
13
votes
4answers
1k views

Efficient comparison of POSIXct in data.table

Hello I am looking for an efficient way of selecting POSIXct rows from a data.table such that the time of day is less than say 12:00:00 (NOTE that millisecond is NOT required, so we can use ITime for ...
13
votes
2answers
89 views

Calculate days since last event in R

My question involves how to calculate the number of days since an event last that occurred in R. Below is a minimal example of the data: df <- ...
13
votes
3answers
1k views

How to fit autoregressive poisson mixed model (count time series) in R?

My task is to assess how various environmental variables affect annual population fluctuations. For this, I need to fit poisson autoregressive model for time-series counts: Where Ni,j is the count ...
12
votes
3answers
12k views

Forecasting time series data

I've done some research and I am stuck in finding the solution. I have a time series data, very basic data frame, let's call it x: Date Used 11/1/2011 587 11/2/2011 578 11/3/2011 600 ...
12
votes
4answers
12k views

Package for time series analysis in python [closed]

I am working on time series in python. The libraries which I found useful and promising are pandas; statsmodel (for ARIMA); simple exponential smoothing is provided from pandas. Also for ...
12
votes
5answers
14k views

Analyzing Daily/Weekly data using ts in R

I have just started playing with the ts class to analyze some time series data I have. I am getting a sense that the ts class is not well suited for analyzing daily or weekly data. Almost all the ...
12
votes
2answers
8k views

MongoDB as a Time Series Database

I'm trying to use mongodb for a time series database and was wondering if anyone could suggest how best to set it up for that scenario. The time series data is very similar to a stock price history. ...
12
votes
5answers
6k views

Peak Detection in Time Series

I'm currently working on a little project in which I want to compare two time-series. The similarity measure is really vague, they are considered to be similar if the two time series roughly have the ...
12
votes
3answers
2k views

Resampling Within a Pandas MultiIndex

I have some hierarchical data which bottoms out into time series data which looks something like this: df = pandas.DataFrame( {'value_a': values_a, 'value_b': values_b}, index=[states, ...
12
votes
8answers
5k views

C++ time series library (analysis and processing) [closed]

I'm looking to get Stack Overflowers' advice and suggestion on time-series libraries written in C++, some of the constraints and requirements for the library: Performance is very critical ...
11
votes
1answer
4k views

Why OpenTSDB chose HBase for Time Series data storage?

I would really appreciate if somebody put some light on the choice of HBase as a data storage engine for OpenTSDB? Which other choices, such as Whisper (Graphite front-end + Carbon persistence), were ...
11
votes
2answers
509 views

Speedup conversion of 2 million rows of date strings to POSIX.ct

I have a csv which includes about 2 million rows of date strings in the format: 2012/11/13 21:10:00 Lets call that csv$Date.and.Time I want to convert these dates (and their accompanying data) to ...
11
votes
3answers
1k views

Detecting rare incidents from multivariate time series intervals

Given a time series of sensor state intervals, how do I implement a classifier which learns from supervised training data to detect an incident based on a sequence of state intervals? To simplify the ...
11
votes
2answers
658 views

Converting irregularly time stamped measurements into equally spaced, time-weighted averages

I have series of measurements which are time stamped and irregularly spaced. Values in these series always represent changes of the measurement -- i.e. without a change no new value. A simple example ...
11
votes
2answers
978 views

What is the state-of-the-art in unsupervised learning on temporal data?

I'm looking for an overview of the state-of-the-art methods that find temporal patterns (of arbitrary length) in temporal data and are unsupervised (no labels). In other words, given a ...
11
votes
1answer
1k views

Sliding time intervals for time series data in R

I am trying to extract interesting statistics for an irregular time series data set, but coming up short on finding the right tools for the job. The tools for manipulating regularly sampled time ...
11
votes
3answers
931 views

Database solution for static time-series data

We have a large and growing dataset of experimental data taken from around 30,000 subjects. For each subject, there are several recordings of data. Within each recording, there is a collection several ...
10
votes
6answers
7k views

MATLAB: compute mean of each 1-minute interval of a time-series

I have a bunch of times-series each described by two components, a timestamp vector (in seconds), and a vector of values measured. The time vector is non-uniform (i.e. sampled at non-regular ...
10
votes
3answers
7k views

pandas, python - how to select specific times in timeseries

I worked now for quite some time using python and pandas for analysing a set of hourly data and find it quite nice (Coming from Matlab.) Now I am kind of stuck. I created my DataFrame like that: ...
10
votes
5answers
3k views

Reshaping time series data from wide to tall format (for plotting)

I have a data frame containing multiple time series of returns, stored in columns. The first column contains dates, and subsequent columns are independent time series each with a name. The column ...
10
votes
1answer
4k views

R tick data : merging date and time into a single object

I'm currently working in tick data with R and I would like to merge date and time into a single object as I need to get a precise time object to compute some statistics on my data. Here is how lmy ...
10
votes
7answers
3k views

Peak recognition in realtime timeseries data

This question seeks to explore the available methods for analysis of a specific class of timeseries data. I do not seek fast and obvious answers. I would like every answer to provide a different ...
10
votes
1answer
5k views

Why NUMPY correlate and corrcoef return different values and how to “normalize” a correlate in “full” mode?

I'm trying to use some Time Series Analysis in Python, using Numpy. I have two somewhat medium-sized series, with 20k values each and I want to check the sliding correlation. The corrcoef gives me ...
10
votes
2answers
8k views

Using a date field in a ts?

I wonder how I can make use of an already existing date field when creating a ts in R. Sometimes you simply have a date before you have a ts object, e.g. x <- as.Date("2008-01-01") + ...
10
votes
3answers
10k views

R: merge two irregular time series (solved)

I have two multivariate time series x and y, both covering approximately the same range in time (one starts two years before the other, but they end on the same date). Both series have missing ...