Goal Recognition with Markov Logic Networks for Player-Adaptive Games
نویسندگان
چکیده
Goal recognition in digital games involves inferring players’ goals from observed sequences of low-level player actions. Goal recognition models support player-adaptive digital games, which dynamically augment game events in response to player choices for a range of applications, including entertainment, training, and education. However, digital games pose significant challenges for goal recognition, such as exploratory actions and ill-defined goals. This paper presents a goal recognition framework based on Markov logic networks (MLNs). The model’s parameters are directly learned from a corpus that was collected from player interactions with a non-linear educational game. An empirical evaluation demonstrates that the MLN goal recognition framework accurately predicts players’ goals in a game environment with exploratory actions and ill-defined goals.
منابع مشابه
Recognizing Player Goals in Open-Ended Digital Games with Markov Logic Networks
Goal recognition in digital games centers on identifying the concrete objectives that a player is attempting to achieve given a domain model and a sequence of player actions in a virtual environment. Goal recognition models in open-ended digital games introduce opportunities for adapting gameplay events based on the choices of individual players, as well as interpreting player behaviors during ...
متن کاملPlayer Goal Recognition in Open-World Digital Games with Long Short-Term Memory Networks
Recent years have seen a growing interest in player modeling for digital games. Goal recognition, which aims to accurately recognize players’ goals from observations of low-level player actions, is a key problem in player modeling. However, player goal recognition poses significant challenges because of the inherent complexity and uncertainty pervading gameplay. In this paper, we formulate play...
متن کاملDeep LSTM-based Goal Recognition Models for Open-World Digital Games
Player goal recognition in digital games offers the promise of enabling games to dynamically customize player experience. Goal recognition aims to recognize players’ high-level intentions using a computational model trained on a player behavior corpus. A significant challenge is posed by devising reliable goal recognition models with a behavior corpus characterized by highly idiosyncratic playe...
متن کاملA Generalized Multidimensional Evaluation Framework for Player Goal Recognition
Recent years have seen a growing interest in player modeling, which supports the creation of player-adaptive digital games. A central problem of player modeling is goal recognition, which aims to recognize players’ intentions from observable gameplay behaviors. Player goal recognition offers the promise of enabling games to dynamically adjust challenge levels, perform procedural content generat...
متن کاملDeep Learning-Based Goal Recognition in Open-Ended Digital Games
While many open-ended digital games feature non-linear storylines and multiple solution paths, it is challenging for game developers to create effective game experiences in these settings due to the freedom given to the player. To address these challenges, goal recognition, a computational player-modeling task, has been investigated to enable digital games to dynamically predict players’ goals....
متن کامل