I'm adapting a soccer prediction model using tensorflow. The modification I need to make is that the original model return odds (3 numbers that add up to 1). I need it to return the most probable score, wich means, two discrete numbers.

The original model structure is:

- An input vector of [none, 36]
- A dense layer of 16 nodes with relu activation
- A second dense layer of 8 nodes with relu activation
- An output vector of [none, 3] and softmax activation

The problem is that softmax return numbers betwen 0,1 and all the entries add up to 1.

I need it to return 2 discrete numbers - Home team score and Away team score. Which is the best activation function for that case?

Here is the github of the project: https://github.com/marceloguaycurus/gitSoccer

  • You can either have linear units on the output, and simply round the output to the nearest integer, or have softmax outputs, where each output signifies a number of goals. The first would allow in principle for arbitrary results, but may be less stable. The second, on the other hand would allow for only a fixed number of possible scores (e.g. 0, 1, 2, 3 or 4 goals per team, or whatever you define). – jdehesa Oct 11 at 16:13

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