Which unsupervised method can infer explicit interaction from occurance(count) data?
#1,384 建立於 2021年4月24日
倉庫指標
- Star
- (17,706 star)
- PR 合併指標
- (平均合併 6天 16小時) (30 天內合併 10 個 PR)
描述
Our input data is a table of edges (edge weight is implicit interaction, which weighted with co-occurrence, edge type was also implicit which inferred from prior knowledge) and a list of nodes (two types: users and items). Group-truth is a small set of edges that are known to exist. The ground-truth set is too small to train a model, therefore, we want to do unsupervised analysis. For example:
edgetable.csv (potential edges) dst | src | attr A | B | edgetype1 A | B | edgetype2 A | C | edgetype1 B | D | edgetype1
nodetable nodeID | type | sample1(count) | sample2(count) | sample3(count) A | nodetype2 | 5 | 6 | 8 B | nodetype1 | 3 | 5 | 9 C | nodetype1 | 2 | 4 | 6 D | nodetype2 | 5 | 2 | 5
ground-truth B D edgetype1
Our purpose is twofold:
Whether there is an explicit interaction between two types of nodes turely exist in given samples?
How to determine the edge type?
Thank you for your help!