19 Apr 2024 World leisure: news, training & property
 
 
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SELECTED ISSUE
Attractions Management
2022 issue 4

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Leisure Management - Emotional reward

Tech

Emotional reward


Scientists have developed a video game that adjusts difficulty based on player emotions, with applications for visitor attractions, as Tom Walker reports

The new technique to adjust difficulty levels could have a major impact on tech-based entertainment and simulation-type rides at visitor attractions Photo: Fit Ztudio/shutterstock

Korean scientists have developed a dynamic way of adjusting the difficulty of video games – by estimating the players’ emotions based on in-game data. The new technology has important applications for the visitor attractions sector.

A team at the Gwangju Institute of Science and Technology (GIST) have created a model in which the difficulty level is tweaked to maximise player satisfaction.

Until now, most developers have relied on dynamic difficulty adjustment (DDA) to crack the tough nut of appropriately balancing a videogame’s difficulty – something deemed essential to provide players with a pleasant experience.

Using DDA, the difficulty of a game adjusts in real-time according to player performance. If a player’s performance exceeds the developer’s expectations for a given difficulty level, the game’s DDA agent automatically raises the difficulty to increase the challenge presented to the player.

While DDA is useful, it’s limited, as the level of difficulty is adjusted simply on player performance – not on how much fun they are having.

Therefore, the team at GIST decided to put a twist on the DDA approach.

A different focus
Instead of focusing on the player’s performance, they developed DDA agents that adjusted the game’s difficulty to maximise one of four different aspects related to a player’s satisfaction: challenge, competence, flow, and valence (positivity or negativity).

The DDA agents were trained via machine learning using data gathered from actual human players, who played a fighting game against various artificial intelligence (AI) systems and then answered a questionnaire about their experience.

Using an algorithm called Monte-Carlo tree search, each DDA agent employed actual game data and simulated data to tune the opposing AI’s fighting style in a way that maximised a specific emotion, or ‘affective state.’

The team verified – through an experiment with 20 volunteers – that the proposed DDA agents could produce AIs that improved the players’ overall experience, no matter their preference.

This marks the first time that affective states have been incorporated directly into DDA agents, which could be useful for commercial games.

Major impact
The new technique to adjust difficulty levels could have a major impact on tech-based entertainment and simulation-type rides at visitor attractions.

It also has potential for other fields that can be ‘gamified’ – including physical activity and exercise.

Professor Kyung-Joong Kim, who led the study at GIST, said: “One advantage of our approach over other emotion-centred methods is that it doesn’t rely on external sensors, such as electroencephalography.

“Once trained, our model can estimate player states using in-game features only.

“Commercial game companies already have huge amounts of player data. They can exploit these data to model the players and solve various issues related to game balancing using our approach,” he said.


Originally published in Attractions Management 2022 issue 4

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