Dota2 Games Results

Donated on 8/13/2016

Dota 2 is a popular computer game with two teams of 5 players. At the start of the game each player chooses a unique hero with different strengths and weaknesses.

Dataset Characteristics

Multivariate

Subject Area

Games

Associated Tasks

Classification

Feature Type

-

# Instances

102944

# Features

115

Dataset Information

Additional Information

Dota 2 is a popular computer game with two teams of 5 players. At the start of the game each player chooses a unique hero with different strengths and weaknesses. The dataset is reasonably sparse as only 10 of 113 possible heroes are chosen in a given game. All games were played in a space of 2 hours on the 13th of August, 2016 The data was collected using: https://gist.github.com/da-steve101/1a7ae319448db431715bd75391a66e1b

Has Missing Values?

No

Variables Table

Variable NameRoleTypeDescriptionUnitsMissing Values
winTargetBinaryno
clusteridIDIntegerno
gamemodeFeatureIntegerno
gametypeFeatureIntegerno
hero1FeatureBinaryno
hero2FeatureBinaryno
hero3FeatureBinaryno
hero4FeatureBinaryno
hero5FeatureBinaryno
hero6FeatureBinaryno

0 to 10 of 117

Additional Variable Information

Each row of the dataset is a single game with the following features (in the order in the vector): 1. Team won the game (1 or -1) 2. Cluster ID (related to location) 3. Game mode (eg All Pick) 4. Game type (eg. Ranked) 5 - end: Each element is an indicator for a hero. Value of 1 indicates that a player from team '1' played as that hero and '-1' for the other team. Hero can be selected by only one player each game. This means that each row has five '1' and five '-1' values. The hero to id mapping can be found here: https://github.com/kronusme/dota2-api/blob/master/data/heroes.json

Dataset Files

FileSize
dota2Train.csv21.3 MB
dota2Test.csv2.4 MB

Reviews

There are no reviews for this dataset yet.

Login to Write a Review
Download (1.7 MB)
0 citations
7735 views

Keywords

Creators

Stephen Tridgell

License

By using the UCI Machine Learning Repository, you acknowledge and accept the cookies and privacy practices used by the UCI Machine Learning Repository.

Read Policy