Semantic Vector Spaces for Broadening Consideration of Consequences
February 23, 2018 Β· Declared Dead Β· π Autonomy and Artificial Intelligence: A Threat or Savior? Editors W.F. Lawless, Ranjeev Mittu, Donald Sofge, Stephen Russell Springer, 2017
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Authors
Douglas Summers Stay
arXiv ID
1802.08554
Category
cs.AI: Artificial Intelligence
Citations
0
Venue
Autonomy and Artificial Intelligence: A Threat or Savior? Editors W.F. Lawless, Ranjeev Mittu, Donald Sofge, Stephen Russell Springer, 2017
Last Checked
4 months ago
Abstract
Reasoning systems with too simple a model of the world and human intent are unable to consider potential negative side effects of their actions and modify their plans to avoid them (e.g., avoiding potential errors). However, hand-encoding the enormous and subtle body of facts that constitutes common sense into a knowledge base has proved too difficult despite decades of work. Distributed semantic vector spaces learned from large text corpora, on the other hand, can learn representations that capture shades of meaning of common-sense concepts and perform analogical and associational reasoning in ways that knowledge bases are too rigid to perform, by encoding concepts and the relations between them as geometric structures. These have, however, the disadvantage of being unreliable, poorly understood, and biased in their view of the world by the source material. This chapter will discuss how these approaches may be combined in a way that combines the best properties of each for understanding the world and human intentions in a richer way.
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