I am writing a Time table generator in java, using AI approaches to satisfy the hard constraints and help find an optimal solution. So far I have implemented and Iterative construction (a most-constrained first heuristic) and Simulated Annealing, and I'm in the process of implementing a genetic algorithm.

Some info on the problem, and how I represent it then : I have a set of events, rooms , features (that events require and rooms satisfy), students and slots The problem consists in assigning to each event a slot and a room, such that no student is required to attend two events in one slot, all the rooms assigned fulfill the necessary requirements.

I have a grading function that for each set if assignments grades the soft constraint violations, thus the point is to minimize this.

The way I am implementing the GA is I start with a population generated by the iterative construction (which can leave events unassigned) and then do the normal steps: evaluate, select, cross, mutate and keep the best. Rinse and repeat.

My problem is that my solution appears to improve too little. No matter what I do, the populations tends to a random fitness and is stuck there. Note that this fitness always differ, but nevertheless a lower limit will appear.

I suspect that the problem is in my crossover function, and here is the logic behind it:

Two assignments are randomly chosen to be crossed. Lets call them assignments A and B. For all of B's events do the following procedure (the order B's events are selected is random):

Get the corresponding event in A and compare the assignment. 3 different situations might happen.

- If only one of them is unassigned and if it is possible to replicate the other assignment on the child, this assignment is chosen.
- If both of them are assigned, but only one of them creates no

conflicts when assigning to the child, that one is chosen. - If both of them are assigned and none create conflict, on of them is randomly chosen.

In any other case, the event is left unassigned.

This creates a child with some of the parent's assignments, some of the mother's, so it seems to me it is a valid function. Moreover, it does not break any hard constraints.

As for mutation, I am using the neighboring function of my SA to give me another assignment based on on of the children, and then replacing that child.

So again. With this setup, initial population of 100, the GA runs and always tends to stabilize at some random (high) fitness value. Can someone give me a pointer as to what could I possibly be doing wrong?

Thanks

Edit: Formatting and clear some things