I am trying to implement expandable CNN by using maclaurin series. The basic idea is the first input node can be decomposed into multiple nodes with different orders and coefficients. Decomposing single nodes to multiple ones can generate different non-linear line connection that generated by maclaurin series. Can anyone give me a possible idea of how to expand
CNN with maclaurin series non-linear expansion? any thought?
I cannot quite understand how to decompose the input node to multiple ones with different non-linear line connections that generation by maclaurin series. as far as I know, the maclaurin series is an approximation function but the decomposing node is not quite intuitive to me in terms of implementation. How to implement a decomposing input node to multiple ones in python? How to make this happen easily? any idea?
import tensorflow as tf import numpy as np import keras from tensorflow.keras.models import Sequential from tensorflow.keras.layers import Dense, Conv2D, MaxPooling2D, Dropout, Flatten from keras.datasets import cifar10 from keras.utils import to_categorical (train_imgs, train_label), (test_imgs, test_label)= cifar10.load_data() output_class = np.unique(train_label) n_class = len(output_class) nrows_tr, ncols_tr, ndims_tr = train_imgs.shape[1:] nrows_ts, ncols_ts, ndims_ts = test_imgs.shape[1:] train_data = train_imgs.reshape(train_imgs.shape, nrows_tr, ncols_tr, ndims_tr) test_data = test_imgs.reshape(test_imgs.shape, nrows_ts, ncols_ts, ndims_ts) input_shape = (nrows_tr, ncols_tr, ndims_tr) train_data = train_data.astype('float32') trast_data = test_data.astype('float32') train_data //= 255 test_data //= 255 train_label_one_hot = to_categorical(train_label) test_label_one_hot = to_categorical(test_label) def pown(x,n): return(x**n) def expandable_cnn(input_shape, output_shape, approx_order): inputs=Input(shape=(input_shape)) x= Dense(input_shape)(inputs) y= Dense(output_shape)(x) model = Sequential() model.add(Conv2D(filters=32, kernel_size=(3,3), padding='same', activation="relu", input_shape=input_shape)) model.add(Conv2D(filters=32, kernel_size=(3,3), activation='relu')) model.add(MaxPooling2D(pool_size=(2,2))) model.add(Dropout(0.25)) model.add(Flatten()) model.add(Dense(512, activation='relu')) model.add(Dropout(0.5)) for i in range(2, approx_order+1): y=add([y, Dense(output_shape)(Activation(lambda x: pown(x, n=i))(x))]) model.add(Dense(n_class, activation='softmax')(y)) return model
but when I ran the above model, I had bunch of compile errors and dimension error. I assume that the way for Tylor non-linear expansion for CNN model may not be correct. Also, I am not sure how to represent weight. How to make this work? any possible idea of how to correct my attempt?
I am expecting to extend CNN with maclaurin series non-linear expansion, how to make the above implementation correct and efficient? any possible idea or approach?