Models in cognitive science are often restricted for the sake of interpretability, and as a result may miss patterns in the data that are instead classified as noise. In contrast, deep neural networks can detect almost any pattern given sufficient data, but have only recently been applied to large-scale data sets and tasks for which there already exist process-level models to compare against. Here, we train deep neural networks to predict human play in 4-in-a-row, a combinatorial game of intermediate complexity, using a data set of 10,874,547 games. We compare these networks to a planning model based on a heuristic function and tree search, and make suggestions for model improvements based on this analysis. This work provides the foundation...
In this paper we present an approach which given only a set of rules is able to learn to play the ga...
The majority of computational theories of inductive processes in psychology derive from small-scale ...
Computational models are greatly useful in cognitive science in revealing the mechanisms of learning...
Abstract When developing models in cognitive science, researchers typically start with their own int...
peer reviewedWhen developing models in cognitive science, researchers typically start with their own...
Deep reinforcement learning agents such as AlphaZero have achieved superhuman strength in complex co...
Predicting the behavior of human participants in strategic settings is an important problem for appl...
As the collection of data becomes more and more commonplace, it unlocks new approaches to old proble...
Real-world planning problems often involve hundreds or even thousands of objects, straining the limi...
Recent breakthroughs in artificial intelligence (AI) have enabled machines to plan in tasks previous...
Using deep neural networks for reinforcement learning has proven very successful, as demonstrated by...
Unlike traditional time series, the action sequences of human decision making usually involve many c...
The game of Go is more challenging than other board games, due to the difficulty of constructing a p...
Humans possess an exceptional aptitude to efficiently make decisions from high-dimensional sensory o...
Our ability to play games like chess and Go relies on both planning several moves ahead and on recog...
In this paper we present an approach which given only a set of rules is able to learn to play the ga...
The majority of computational theories of inductive processes in psychology derive from small-scale ...
Computational models are greatly useful in cognitive science in revealing the mechanisms of learning...
Abstract When developing models in cognitive science, researchers typically start with their own int...
peer reviewedWhen developing models in cognitive science, researchers typically start with their own...
Deep reinforcement learning agents such as AlphaZero have achieved superhuman strength in complex co...
Predicting the behavior of human participants in strategic settings is an important problem for appl...
As the collection of data becomes more and more commonplace, it unlocks new approaches to old proble...
Real-world planning problems often involve hundreds or even thousands of objects, straining the limi...
Recent breakthroughs in artificial intelligence (AI) have enabled machines to plan in tasks previous...
Using deep neural networks for reinforcement learning has proven very successful, as demonstrated by...
Unlike traditional time series, the action sequences of human decision making usually involve many c...
The game of Go is more challenging than other board games, due to the difficulty of constructing a p...
Humans possess an exceptional aptitude to efficiently make decisions from high-dimensional sensory o...
Our ability to play games like chess and Go relies on both planning several moves ahead and on recog...
In this paper we present an approach which given only a set of rules is able to learn to play the ga...
The majority of computational theories of inductive processes in psychology derive from small-scale ...
Computational models are greatly useful in cognitive science in revealing the mechanisms of learning...