I'm trying to use the SHAP library to see what parts of my images are important in a convolutional neural network that I trained with Keras (backend=tensorflow). Specifically, I'm using the **GradientExplainer**. I've been able to follow the linked example on a one-input CNN that I trained, but I cannot get it to work with a more complex CNN.

My CNN has three inputs, as the 0th, 1st and (-10)th layers (the last is scalar data). So I've modified map2layer thusly:

```
def map2layer(i1,i2,i3,layer):
feed_dict = dict(zip([model.layers[1].input,model.layers[0].input,model.layers[-10].input], [i1,i2,i3]))
for k in feed_dict.keys():
print(k,feed_dict[k].shape,feed_dict[k].dtype)
return K.get_session().run(model.layers[layer].input, feed_dict)
```

I've confirmed that the inputs corresond correctly to the layers' shapes and dtypes (see `for`

loop in `map2layer`

). Also note that the 'background' data sample is 1000 here.

```
Tensor("input_1:0", shape=(?, 128, 128, 1), dtype=float32) (1000, 128, 128, 1) float32
Tensor("input_2:0", shape=(?, 32, 32, 1), dtype=float32) (1000, 32, 32, 1) float32
Tensor("input_3:0", shape=(?, 4), dtype=float32) (1000, 4) float32
```

One oddity here is that my `model.layers[0].input`

is labeled `input_2`

and `model.layers[1].input`

is labeled `input_1`

in my Keras model summary. I suspect this is perhaps due to a subsequent `up_sampling2d`

layer. This may have no bearing on my issue, but wanted to mention it.

I get an error on this line,

```
shap_values,indexes=e.shap_values(map2layer(i1_norm,i2_norm,i3_norm,layer) ranked_outputs=1)
```

Which gives me this message:

```
tensorflow.python.framework.errors_impl.InvalidArgumentError: You must feed a value for placeholder tensor 'input_3' with dtype float and shape [?,4]
```

`i1_norm`

, `i2_norm`

, and `i3_norm`

are normalized tensors with shapes of `(3, 128, 128, 1)`

, `(3, 32, 32, 1)`

, and `(3, 4)`

, respectively. So I want SHAP images of 3 samples.

It appears to me that I am giving it a tensor for `input_3`

and it should just use that as a "placeholder". Admittedly, I only use Keras and not pure Tensorflow, so I'm not quite sure what it's expecting or how to provide it. Any solutions here are much appreciated!