2022
DOI: 10.1609/aaai.v36i11.21586
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Using Graph-Aware Reinforcement Learning to Identify Winning Strategies in Diplomacy Games (Student Abstract)

Abstract: This abstract proposes an approach towards goal-oriented modeling of the detection and modeling complex social phenomena in multiparty discourse in an online political strategy game. We developed a two-tier approach that first encodes sociolinguistic behavior as linguistic features then use reinforcement learning to estimate the advantage afforded to any player. In the first tier, sociolinguistic behavior, such as Friendship and Reasoning, that speakers use to influence others are encoded as linguistic featur… Show more

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“…Recent work has considered the centrality of senders in their networks as an important signal of their local influence [71,72]. We constructed a social graph of the email interactions, with employees as the nodes, to implicitly capture the workplace relations and dynamics between employees.…”
Section: Professional Influence (2 Features)mentioning
confidence: 99%
“…Recent work has considered the centrality of senders in their networks as an important signal of their local influence [71,72]. We constructed a social graph of the email interactions, with employees as the nodes, to implicitly capture the workplace relations and dynamics between employees.…”
Section: Professional Influence (2 Features)mentioning
confidence: 99%