Improving Deep Localized Level Analysis: How Game Logs Can Help

12/07/2022
by   Natalie Bombardieri, et al.
0

Player modelling is the field of study associated with understanding players. One pursuit in this field is affect prediction: the ability to predict how a game will make a player feel. We present novel improvements to affect prediction by using a deep convolutional neural network (CNN) to predict player experience trained on game event logs in tandem with localized level structure information. We test our approach on levels based on Super Mario Bros. (Infinite Mario Bros.) and Super Mario Bros.: The Lost Levels (Gwario), as well as original Super Mario Bros. levels. We outperform prior work, and demonstrate the utility of training on player logs, even when lacking them at test time for cross-domain player modelling.

READ FULL TEXT
research
09/06/2018

Player Experience Extraction from Gameplay Video

The ability to extract the sequence of game events for a given player's ...
research
11/27/2018

Clustering Player Strategies from Variable-Length Game Logs in Dominion

We present a novel way to encode game logs as numeric features in the ca...
research
06/10/2019

Making CNNs for Video Parsing Accessible

The ability to extract sequences of game events for high-resolution e-sp...
research
11/29/2020

Detecting Video Game Player Burnout with the Use of Sensor Data and Machine Learning

Current research in eSports lacks the tools for proper game practising a...
research
07/04/2019

From Pixels to Affect: A Study on Games and Player Experience

Is it possible to predict the affect of a user just by observing her beh...
research
03/17/2023

Understanding why shooters shoot – An AI-powered engine for basketball performance profiling

Understanding player shooting profiles is an essential part of basketbal...
research
10/06/2020

Chess as a Testing Grounds for the Oracle Approach to AI Safety

To reduce the danger of powerful super-intelligent AIs, we might make th...

Please sign up or login with your details

Forgot password? Click here to reset