Preventing Undesirable Behavior of Intelligent Machines
by Philip S. Thomas, Bruno Castro da Silva, Andrew G. Barto, Stephen Giguere, Yuriy Brun, Emma Brunskill
Abstract:
Intelligent machines using machine learning algorithms are ubiquitous, ranging from simple data analysis and pattern recognition tools to complex systems that achieve super-human performance on various tasks. Ensuring that they do not exhibit undesirable behavior — that they do not, for example, cause harm to humans — is therefore a pressing problem that we address here. We propose a general and flexible framework for designing machine learning algorithms that simplifies the problem of specifying and regulating undesirable behavior. To show the viability of this framework, we use it to create machine learning algorithms that preclude the dangerous behavior caused by standard machine learning algorithms in our experiments. Our framework for designing machine learning algorithms simplifies the safe and responsible application of machine learning.
Citation:
Philip S. Thomas, Bruno Castro da Silva, Andrew G. Barto, Stephen Giguere, Yuriy Brun, and Emma Brunskill, Preventing Undesirable Behavior of Intelligent Machines, Science, vol. 366, no. 6468, 22 November 2019, pp. 999–1004.
Bibtex:
@article{Thomas19science,
  author = {Philip S. Thomas and Bruno Castro {da Silva} and Andrew G. Barto and Stephen Giguere and Yuriy Brun and Emma Brunskill},
  title = {\href{http://people.cs.umass.edu/brun/pubs/pubs/Thomas19science.pdf}{Preventing Undesirable Behavior of Intelligent Machines}},
  journal = {Science},
  venue = {Science},
  year = {2019},
  issn = {0036-8075},
  volume = {366},
  number = {6468},
  month = {22~November},
  date = {22},
  pages = {999--1004},
  
  doi = {10.1126/science.aag3311},
  note = {\href{https://doi.org/10.1126/science.aag3311}{DOI: 10.1126/science.aag3311}},

  abstract = {Intelligent machines using machine learning algorithms are
  ubiquitous, ranging from simple data analysis and pattern recognition tools
  to complex systems that achieve super-human performance on various tasks.
  Ensuring that they do not exhibit undesirable behavior — that they do
  not, for example, cause harm to humans — is therefore a pressing
  problem that we address here. We propose a general and flexible framework
  for designing machine learning algorithms that simplifies the problem of
  specifying and regulating undesirable behavior. To show the viability of
  this framework, we use it to create machine learning algorithms that
  preclude the dangerous behavior caused by standard machine learning
  algorithms in our experiments. Our framework for designing machine learning
  algorithms simplifies the safe and responsible application of machine
  learning.},
  
  fundedBy = {NSF 1350984, NSF CCF-1453474, NSF CCF-1763423, 
  Institute of Educational Science grant R305A130215},
}