Developmental Bootstrapping of AIs

08/08/2023
by   Mark Stefik, et al.
0

Although some current AIs surpass human abilities especially in closed artificial worlds such as board games, their abilities in the real world are limited. They make strange mistakes and do not notice them. They cannot be instructed easily, fail to use common sense, and lack curiosity. They do not make good collaborators. Mainstream approaches for creating AIs are built using the traditional manually-constructed symbolic AI approach and generative and deep learning AI approaches including large language models (LLMs). These systems are not well suited for creating robust and trustworthy AIs. Although it is outside of the mainstream, the developmental bootstrapping approach has more promise. In developmental bootstrapping, AIs develop competences like human children do. They start with innate competences. They interact with the environment and learn from their interactions. They incrementally extend their innate competences with self-developed competences. They interact and learn from people and establish perceptual, cognitive, and common grounding. They acquire the competences that they need through an incremental bootstrapping process. However, developmental robotics has not yet produced AIs with robust adult-level competences. Projects have typically stopped at the Toddler Barrier corresponding to human infant development at about two years of age, before their speech is fluent. They also do not bridge the Reading Barrier, to skillfully and skeptically tap into the vast socially developed recorded information resources that power LLMs. The next competences in human cognitive development involve intrinsic motivation, imitation learning, imagination, coordination, and communication. This position paper lays out the logic, prospects, gaps, and challenges for extending the practice of developmental bootstrapping to acquire further competences and create robust and resilient AIs.

READ FULL TEXT

page 4

page 5

page 7

page 9

page 25

page 36

page 41

research
06/10/2022

ABCDE: An Agent-Based Cognitive Development Environment

Children's cognitive abilities are sometimes cited as AI benchmarks. How...
research
01/02/2022

Building Human-like Communicative Intelligence: A Grounded Perspective

Modern Artificial Intelligence (AI) systems excel at diverse tasks, from...
research
01/14/2023

World Models and Predictive Coding for Cognitive and Developmental Robotics: Frontiers and Challenges

Creating autonomous robots that can actively explore the environment, ac...
research
07/15/2023

The SocialAI School: Insights from Developmental Psychology Towards Artificial Socio-Cultural Agents

Developmental psychologists have long-established the importance of soci...
research
12/11/2018

Informing Artificial Intelligence Generative Techniques using Cognitive Theories of Human Creativity

The common view that our creativity is what makes us uniquely human sugg...
research
04/27/2021

SocialAI 0.1: Towards a Benchmark to Stimulate Research on Socio-Cognitive Abilities in Deep Reinforcement Learning Agents

Building embodied autonomous agents capable of participating in social i...

Please sign up or login with your details

Forgot password? Click here to reset