Updated on 2022-04-14 GMT+08:00

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

Table 1 TopicRank parameters

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.