I'm getting started with machine learning and analytics, and my approach is to dive right in with data and learn methods/tools as I need them.
I have a set of event data, logging people's movement in/out of a room using via RFID chips with unique ids so that I have a timestamp of when a chip enters a room and when it leaves. I want to classify the chip ids based on their movements in and out of the room.
- A chip that leaves and comes back regularly could belong to someone who works in that room.
- A chip that enters and stays for a long time may belong to electronic equipment which is moved around.
- A chip that comes and leaves a short while later, with few or only one set of entrances/exits could be a visitor.
- A chip that spends minimal time in the room and does not visit often could just be someone walking through.
Those are my four main categories.
So far, I have tried k-means clustering. For each chip, I compute some parameters that could indicate a particular category: average time spent in room, number of days seen in a week, total time spent in a room, and average number of entrances/exits per day.
With this, I have seen some reasonable results, but depending on what parameters I use results vary drastically. Looking at chip parameters I generate on plot, there's a lot of variation in the classification. I do not have any good training data, which is why I tried a classification method first.
I'm mainly looking for some advice on what might be better algorithms or techniques to use, or even if my approach is way off. I can provide code or dummy data if needed, but I'm really just looking for a good direction. Thanks.