Andry Chowanda
Binus University
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Publication
Featured researches published by Andry Chowanda.
intelligent virtual agents | 2014
Andry Chowanda; Peter Blanchfield; Martin Flintham; Michel F. Valstar
We propose an integrated framework for social and emotional game-agents to enhance their believability and quality of interaction, in particular by allowing an agent to forge social relations and make appropriate use of social signals. The framework is modular including sensing, interpretation, behaviour generation, and game components. We propose a generic formulation of action selection rules based on observed social and emotional signals, the agent’s personality, and the social relation between agent and player. The rules are formulated such that its variables can easily be obtained from real data. We illustrate and evaluate our framework using a simple social game called The Smile Game.
intelligent virtual agents | 2016
Andry Chowanda; Martin Flintham; Peter Blanchfield; Michel F. Valstar
This paper presents the findings of an empirical study that explores player game experience by implementing the ERiSA Framework in games. A study with Action Role-Playing Game (RPG) was designed to evaluate player interactions with game companions, who were imbued with social and emotional skill by the ERiSA Framework. Players had to complete a quest in the Skyrim game, in which players had to use social and emotional skills to obtain a sword. The results clearly show that game companions who are capable of perceiving and exhibit emotions, are perceived to have personality and can forge relationships with the players, enhancing the player experience during the game.
intelligent virtual agents | 2016
Wenjue Zhu; Andry Chowanda; Michel F. Valstar
This paper presents a novel data-driven Topic Switch Model based on a cognitive representation of a limited set of topics that are currently in-focus, which determines what utterances are chosen next. The transition model was statistically learned from a large set of transcribed dyadic interactions. Results show that using our proposed model results in interactions that on average last 2.17 times longer compared to the same system without our model.
Archive | 2016
Andry Chowanda; Peter Blanchfield; Martin Flintham; Michel F. Valstar
Archive | 2015
Andry Chowanda; Peter Blanchfield; Martin Flintham; Michel F. Valstar
Procedia Computer Science | 2017
Yen Lina Prasetio; Rendy Wijaya; Michael Pratama Sjah; Michael Ryan Christian; Andry Chowanda
Procedia Computer Science | 2017
Andry Chowanda; Alan Darmasaputra Chowanda
MATEC Web of Conferences | 2016
Rhio Sutoyo; Jeklin Harefa; Andry Chowanda
ComTech | 2014
Andry Chowanda; Benard Hadi Prabowo; Glen Iglesias; Marsella Diansari
ComTech | 2011
Andry Chowanda