Unsupervised Hebbian Learning on Point Sets in StarCraft II

07/13/2022
by   Beomseok Kang, et al.
0

Learning the evolution of real-time strategy (RTS) game is a challenging problem in artificial intelligent (AI) system. In this paper, we present a novel Hebbian learning method to extract the global feature of point sets in StarCraft II game units, and its application to predict the movement of the points. Our model includes encoder, LSTM, and decoder, and we train the encoder with the unsupervised learning method. We introduce the concept of neuron activity aware learning combined with k-Winner-Takes-All. The optimal value of neuron activity is mathematically derived, and experiments support the effectiveness of the concept over the downstream task. Our Hebbian learning rule benefits the prediction with lower loss compared to self-supervised learning. Also, our model significantly saves the computational cost such as activations and FLOPs compared to a frame-based approach.

READ FULL TEXT
research
02/22/2023

Unsupervised 3D Object Learning through Neuron Activity aware Plasticity

We present an unsupervised deep learning model for 3D object classificat...
research
08/19/2022

Forecasting Evolution of Clusters in StarCraft II with Hebbian Learning

Tactics in StarCraft II are closely related to group behavior of the gam...
research
09/01/2021

EventPoint: Self-Supervised Local Descriptor Learning for Event Cameras

We proposes a method of extracting intrest points and descriptors using ...
research
05/05/2021

Self-Supervised Multi-Frame Monocular Scene Flow

Estimating 3D scene flow from a sequence of monocular images has been ga...
research
03/14/2023

Lightweight feature encoder for wake-up word detection based on self-supervised speech representation

Self-supervised learning method that provides generalized speech represe...
research
07/06/2022

Learning Invariant World State Representations with Predictive Coding

Self-supervised learning methods overcome the key bottleneck for buildin...
research
11/15/2016

Diversity encouraged learning of unsupervised LSTM ensemble for neural activity video prediction

Being able to predict the neural signal in the near future from the curr...

Please sign up or login with your details

Forgot password? Click here to reset