Real-time Recommendation
Overview
The Real-time Recommendation algorithm is based on the random walk model and is used to recommend nodes that are similar (have similar relationships or preferences) to the input node.
Application Scenarios
This algorithm can be used to recommend similar products based on historical browsing data or recommend potential friends with similar preferences.
It is applicable to scenarios such as e-commerce and social networking.
Parameter Description
Parameter |
Mandatory |
Description |
Type |
Value Range |
Default Value |
---|---|---|---|---|---|
sources |
Yes |
Node ID. Multiple node IDs separated by commas (,) are supported (standard CSV input format). |
String |
The number of source nodes cannot exceed 30. |
- |
alpha |
No |
Weight coefficient. A larger value indicates a longer step. |
Double |
A real number between 0 and 1 (excluding 0 and 1) |
0.85 |
N |
No |
Total number of walk steps |
Int |
1-200,000 |
10,000 |
nv |
No |
Parameter indicating that the walk process ends ahead of schedule: minimum number of access times of a potential recommended node
NOTE:
If a node is accessed during random walk and the number of access times reaches nv, the node will be recorded as the potential recommended node. |
Int |
1-10 |
5 |
np |
No |
Parameter indicating that the walk process ends ahead of schedule: number of potential recommended nodes
NOTE:
If the number of potential recommended nodes of a source node reaches np, the random walk for the source node ends ahead of schedule. |
Int |
1-2,000 |
1000 |
label |
No |
Expected type of the vertex to be output.
NOTE:
|
String |
Node label |
- |
directed |
No |
Whether to consider the edge direction |
Bool |
true or false |
true |
alpha determines the jump probability coefficient, also called damping coefficient, which is a computing control variable in the algorithm.
Precautions
In the end conditions, the smaller the values of nv and np, the faster the algorithm ends.
Example
Set parameters sources to Lee, alpha to 0.85, N to 10,000, nv to 5, np to 1,000, directed to true, and label to null.
The sub-graph formed by top nodes in the calculation result is displayed on the canvas. The size of a node varies with the final scores. The JSON result is displayed in the query result area.
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