pyagc.clusters.DMoNClusterHead
- class DMoNClusterHead(n_clusters: int, n_features: int)[source]
Bases:
BaseClusterHeadDeep Modularity Network (DMoN) Clustering Head proposed in the “Graph Clustering with Graph Neural Networks” paper (Tsitsulin et al., JMLR 2023).
This layer learns a soft cluster assignment matrix \(\mathbf{S}\) by projecting node embeddings \(\mathbf{Z}\) into \(K\) clusters using a linear transformation followed by a softmax. It optimizes the clustering structure with two objectives:
(1) Spectral modularity loss:
\[\mathcal{L}_s = - \frac{1}{2m} \mathrm{Tr}(\mathbf{S}^\top \mathbf{B} \mathbf{S})\]where \(\mathbf{B} = \mathbf{A} - \frac{\mathbf{d}\mathbf{d}^\top}{2m}\) is the modularity matrix, and \(m\) is the total number of edges.
(2) Collapse regularization loss:
\[\mathcal{L}_c = \frac{\sqrt{K}}{N} \left\| \sum_i \mathbf{S}_i^\top \right\|_F - 1\]which prevents unbalanced cluster sizes.
- Parameters:
- __init__(n_clusters: int, n_features: int)[source]
Initialize internal Module state, shared by both nn.Module and ScriptModule.
Methods
__init__(n_clusters, n_features)Initialize internal Module state, shared by both nn.Module and ScriptModule.
add_module(name, module)Add a child module to the current module.
apply(fn)Apply
fnrecursively to every submodule (as returned by.children()) as well as self.bfloat16()Casts all floating point parameters and buffers to
bfloat16datatype.buffers([recurse])Return an iterator over module buffers.
children()Return an iterator over immediate children modules.
cluster(z[, soft])Predicts cluster assignments.
compile(*args, **kwargs)Compile this Module's forward using
torch.compile().cpu()Move all model parameters and buffers to the CPU.
cuda([device])Move all model parameters and buffers to the GPU.
double()Casts all floating point parameters and buffers to
doubledatatype.eval()Set the module in evaluation mode.
extra_repr()Return the extra representation of the module.
float()Casts all floating point parameters and buffers to
floatdatatype.forward(z, edge_index)Computes DMoN clustering objectives using node embeddings and graph structure.
get_buffer(target)Return the buffer given by
targetif it exists, otherwise throw an error.get_extra_state()Return any extra state to include in the module's state_dict.
get_parameter(target)Return the parameter given by
targetif it exists, otherwise throw an error.get_submodule(target)Return the submodule given by
targetif it exists, otherwise throw an error.half()Casts all floating point parameters and buffers to
halfdatatype.ipu([device])Move all model parameters and buffers to the IPU.
load_state_dict(state_dict[, strict, assign])Copy parameters and buffers from
state_dictinto this module and its descendants.modules()Return an iterator over all modules in the network.
mtia([device])Move all model parameters and buffers to the MTIA.
named_buffers([prefix, recurse, ...])Return an iterator over module buffers, yielding both the name of the buffer as well as the buffer itself.
named_children()Return an iterator over immediate children modules, yielding both the name of the module as well as the module itself.
named_modules([memo, prefix, remove_duplicate])Return an iterator over all modules in the network, yielding both the name of the module as well as the module itself.
named_parameters([prefix, recurse, ...])Return an iterator over module parameters, yielding both the name of the parameter as well as the parameter itself.
parameters([recurse])Return an iterator over module parameters.
register_backward_hook(hook)Register a backward hook on the module.
register_buffer(name, tensor[, persistent])Add a buffer to the module.
register_forward_hook(hook, *[, prepend, ...])Register a forward hook on the module.
register_forward_pre_hook(hook, *[, ...])Register a forward pre-hook on the module.
register_full_backward_hook(hook[, prepend])Register a backward hook on the module.
register_full_backward_pre_hook(hook[, prepend])Register a backward pre-hook on the module.
register_load_state_dict_post_hook(hook)Register a post-hook to be run after module's
load_state_dict()is called.register_load_state_dict_pre_hook(hook)Register a pre-hook to be run before module's
load_state_dict()is called.register_module(name, module)Alias for
add_module().register_parameter(name, param)Add a parameter to the module.
register_state_dict_post_hook(hook)Register a post-hook for the
state_dict()method.register_state_dict_pre_hook(hook)Register a pre-hook for the
state_dict()method.requires_grad_([requires_grad])Change if autograd should record operations on parameters in this module.
reset_cluster_centers([cluster_centers])Manually sets the cluster centers.
set_extra_state(state)Set extra state contained in the loaded state_dict.
set_submodule(target, module[, strict])Set the submodule given by
targetif it exists, otherwise throw an error.share_memory()state_dict(*args[, destination, prefix, ...])Return a dictionary containing references to the whole state of the module.
to(*args, **kwargs)Move and/or cast the parameters and buffers.
to_empty(*, device[, recurse])Move the parameters and buffers to the specified device without copying storage.
train([mode])Set the module in training mode.
type(dst_type)Casts all parameters and buffers to
dst_type.xpu([device])Move all model parameters and buffers to the XPU.
zero_grad([set_to_none])Reset gradients of all model parameters.
Attributes
T_destinationcall_super_initdump_patchespredictAlias for
cluster().- reset_cluster_centers(cluster_centers: Optional[Tensor] = None) None[source]
Manually sets the cluster centers.
- Parameters:
cluster_centers (torch.Tensor, optional) – Tensor of shape
(n_clusters, n_features)to initialize the cluster centers. If None, use Xavier uniform initialization.- Return type:
- forward(z: Tensor, edge_index: Tensor) Tuple[Tensor, Tensor][source]
Computes DMoN clustering objectives using node embeddings and graph structure.
- Parameters:
z (torch.Tensor) – Node embeddings of shape
(N, F).edge_index (torch.Tensor) – Edge indices of shape
(2, E).
- Returns:
modularity_loss and collapse_loss
- Return type:
Tuple[torch.Tensor, torch.Tensor]
- cluster(z: Tensor, soft: bool = False) Tensor[source]
Predicts cluster assignments.
- Parameters:
z (torch.Tensor) – Input tensor of shape
(n_samples, n_features).soft (bool, optional) – If True, returns the soft assignment matrix; if False, returns hard cluster assignments. (default:
False)
- Returns:
Tensor–:If
softis False,(n_samples,)tensor of cluster indices.If
softis True,(n_samples, n_clusters)tensor of probabilities.