TopicRank
Overview
TopicRank algorithm is one of commonly used algorithms for ranking topics by multiple dimensions.
Application Scenarios
This algorithm is applicable to rank hot topics. For example, it can be used to rank complaint topics obtained through a government hotline.
Parameter Description
Name |
Mandatory |
Description |
Type |
Value Range |
Default |
---|---|---|---|---|---|
sources |
Yes |
Vertex ID. You can specify multiple IDs in CSV format and separate them with commas (,). |
String |
Currently, a maximum of 100000 IDs are allowed. |
- |
actived_p |
No |
Initial weight of the source vertices |
Double |
The value ranges from 0 to 100000. |
1 |
default_p |
No |
Initial weight of a non-source vertices |
Double |
The value ranges from 0 to 100000. |
1 |
filtered |
No |
Whether to filter results |
Boolean |
The value can be true or false. |
false |
only_neighbors |
No |
Whether to display only the neighboring vertices of the sources |
Boolean |
The value can be true or false. |
false |
alpha |
No |
Weight coefficient |
Real number |
A real number between 0 and 1 |
0.85 |
convergence |
No |
Convergence |
Real number |
A real number between 0 and 1 |
0.00001 |
max_iterations |
No |
Maximum iterations |
Positive integer |
The value ranges from 1 to 2000. |
1000 |
directed |
No |
Whether the edges are directed |
Boolean |
The value can be true or false. |
true |
num_thread |
No |
Number of threads |
Positive integer |
1-40 |
4 |
Example
Specify sources="20190110004349,20190129023326,20190107003294,20190129023391", filtered = true, only_neighbors=true, alpha=0.85, converage=0.00001, max_iterations=1000, directed=true, and label="Topic" to obtain the topic ranking result.
Feedback
Was this page helpful?
Provide feedbackThank you very much for your feedback. We will continue working to improve the documentation.