Skip to content

Code problem #7

@hongxiaDu

Description

@hongxiaDu

Hi, thanks your work!
I have some confusion about the code.
I want to know what self.word_context means, and why concat with x1(pair_h = torch.cat((q1, x1), dim=-1)
q1 = self.word_context.weight[0:].view(1, -1).repeat(x1.shape[0],1).view(x1.shape[0], self.out_features))?
It doesn't seem to be reflected in the formula.
image

When AGGR(edge) aggregates features of hyperedges to nodes, pair_h = torch.cat((q1, y1), dim=-1) , q1 are hyperedge features, y1 are node features. So, I guess whether q1 is the hyperedge feature when nodes features aggregate to hyperedges features?
If the guess is correct? But why self.word_context = nn.Embedding(1, self.out_features), instead of self.word_context = nn.Embedding(n_hyperedge, self.out_features). Don't we need to distinguish features of hyperedges?

Metadata

Metadata

Assignees

No one assigned

    Labels

    No labels
    No labels

    Projects

    No projects

    Milestone

    No milestone

    Relationships

    None yet

    Development

    No branches or pull requests

    Issue actions