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

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Keywords

videogame

Creators

Stephen Tridgell

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