# How to design a neural network to recognize distinct features?

I am trying to build a neural network in tensorflow, using tf.layers.dense interface. I want to figure out how can I make tensorflow see all the features as sets of features.

An example:

Classifying a group of people as a good/bad basketball team (0- bad, 1- good). Each person has his/her own features (gender, age, height, weight, years playing basketball). To classify the whole team as good or bad, the neural network would have to see features of 5 people and the output should be either 0 or 1.

Now in this example, how do I make the network see all the different features associated with different people and output a single classification digit?

I assume it has something to do with the shapes of the input tensors, I tried making the tensor of the shape [batch_size, number_of_players, number_of_features] which would look like this:

[
[gender, age, height, weight, years_playing_basketball], //team1

[gender, age, height, weight, years_playing_basketball], //team2
]

Naturally, after passing this tensor through several tf.layers.dense layers, the output would also be a 3D tensor while I would only need a single number as an output. On the other hand, If I put all team features into a single array, I believe the network wouldn't have any way of knowing that these are in fact features of 5 different people. Thanks for your help in advance!

• Hopefully, your network would learn to the input correctly and correctly identify weights. You could speed this process up by using a hidden layer size of 5, perhaps inducing the network to use each node in the layer as the overall rating for each individual. – Evan Weissburg Jan 16 '18 at 15:09

Naturally, after passing this tensor through several tf.layers.dense layers, the output would also be a 3D tensor while I would only need a single number as an output.

You would need a 1D tensor with batch_size different outputs, correct? One output per full team in the batch.

On the other hand, If I put all team features into a single array, I believe the network wouldn't have any way of knowing that these are in fact features of 5 different people.

This is the most common solution, and probably also the best. Definitely the easiest. This solution only works if you are sure that every team always has 5 people, I suppose that is a safe assumption?

This solution is often going to be referred to as "flattening" (in many frameworks you can convert a (number_of_players, number_of_features) tensor into a (number_of_players * number_of_features) tensor using a function called flatten). Yes, you're correct that the neural network has no way of ''knowing'' that the age feature of team member X is somehow similarly important as the age feature of team member Y, or ''knowing'' that the age and gender features of team member X are somehow more closely related to each other than the age feature of team member X and the gender feature of team member Y... but that's generally fine. If it turns out to be important to learn something like that, it can still do so.

One additional tip: if the order in which different persons appear in the same team does not matter (e.g. if there is not some important, consistent position-based ordering or something like that), I'd recommend augmenting your data by also including shuffled versions of the teams you already have to your data. For example, if you data contains a team [P1, P2, P3, P4, P5] (where every P is a sequence of features corresponding to one person), I'd augment the dataset by also adding a team [P2, P1, P3, P4, P5], and a team [P3, P1, P2, P4, P5], etc. You can basically add all possible permutations.

• Yes, I actually meant one output per batch :) thank you for the detailed answer! – Dainius Salkauskas Jan 16 '18 at 15:45