I don't think there can be one answer to all the deep learning models. WHich of the deep learning models are parametric and which are non-parametric and why?
Deep learning models are generally parametric - in fact they have a huge number of parameters, one for each weight that is tuned during training.
As the number of weights generally stays constant, they technically have fixed degrees of freedom. However, as there are generally so many parameters they may be seen to emulate non-parametric.
Gaussian processes (for example) use each observation as a new weight and as the number of points goes to infinity so too do the number of weights (not to be confused with hyper parameters).
I say generally because there are so many different flavours of each model. For example low rank GPs have a bounded number of parameters which are inferred by the data and I'm sure someone has been making some type of non-parametric dnn at some research group!
A standard deep neural network (DNN) is, technically speaking, parametric since it has a fixed number of parameters. However, most DNNs have so many parameters that they could be interpreted as nonparametric; it has been proven that in the limit of infinite width, a deep neural network can be seen as a Gaussian process (GP), which is a nonparametric model [Lee et al., 2018].
Nevertheless, let's strictly interpret DNNs as parametric for the rest of this answer.
Some examples of parametric deep learning models are:
- Deep autoregressive network (DARN)
- Sigmoid belief network (SBN)
- Recurrent neural network (RNN), Pixel CNN/RNN
- Variational autoencoder (VAE), other deep latent Gaussian models e.g. DRAW
Some examples of nonparametric deep learning models are:
- Deep Gaussian process (GPs)
- Recurrent GP
- State space GP
- Hierarchical Dirichlet process
- Cascaded Indian Buffet process
Deep learning models should not be considered parametric. Parametric models are defined as models based off an a priori assumption about the distributions that generate the data. Deep nets do not make assumptions about the data generating process, rather they use large amounts of data to learn a function that maps inputs to outputs. Deep learning is non-parametric by any reasonable definition.
Deutsch and Journel (1997, pp. 16-17) opined on the misleading nature of the term "non-parametric". They suggested that ≪...the terminology "parameter-rich" model should be retained for indicator based models instead of the traditional but misleading qualifier "non-parametric".≫
"Parameter rich" may be an accurate description, but "rich" has an emotional loading that lends a positive view which may not always be warranted (!).
Some professors may yet persist who refer collectively to neural nets, random forests, and the like as all being "non-parametric". The increased opacity and piecewise nature of neural nets (especially with the spread of ReLU activation functions) makes them non-parameteric-esque.