I have a dataset from which I would like to detect recurring patterns (i.e: daily, weekly, monthly). The dataset only contains a time stamp (datetime), and the spacing is non-uniform.

The observations in the data reflect the exact time when this one person passes my window. He does this several times a day (on a single day he walks by my window approx 10-30 times), and I am trying to see, if there is any pattern (there might also be some seasonality, sudden changes in previous behavior and other interesting stuff going on).

Does anyone have a suggestion for a statistical model/approach that might be helpful in figuring out if there is any pattern in this behavior? Hopefully, I’ll be able to predict when he will pass my window again ;) How would you approach this?

Any help would really be appreciated.

  • 1
    Uh...is someone stalking you? You may have bigger issues! I would start by creating a plot, x axis is day and y axis is time of day. You can also consider a radar type chart if that helps. – Reeza Nov 8 '18 at 21:49
  • It might be a stalker, or just a person who really likes the street on which I’m living :) And thank you, @Reeza. I’ll try the plot as well as a radar chart. – Sara A. Nov 8 '18 at 22:11
  • This should be useful. – jsb Nov 9 '18 at 1:25
  • So sorry @jsb. Not really helpful, but thanks anyway. I have tried my best to formulate the question as simple as possible. Of course this is just an example and is not the real data that I’m working with. – Sara A. Nov 9 '18 at 3:03
  • 1
    This question is more about statistics than programming. You may get a better response on stats.stackexchange.com – user667489 Nov 9 '18 at 9:05

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Browse other questions tagged or ask your own question.