32,709 research outputs found
Artificial morality: Making of the artificial moral agents
Abstract:
Artificial Morality is a new, emerging interdisciplinary field that centres
around the idea of creating artificial moral agents, or AMAs, by implementing moral
competence in artificial systems. AMAs are ought to be autonomous agents capable of
socially correct judgements and ethically functional behaviour. This request for moral
machines comes from the changes in everyday practice, where artificial systems are being
frequently used in a variety of situations from home help and elderly care purposes to
banking and court algorithms. It is therefore important to create reliable and responsible
machines based on the same ethical principles that society demands from people. New
challenges in creating such agents appear. There are philosophical questions about a
machine’s potential to be an agent, or mora
l agent, in the first place. Then comes the
problem of social acceptance of such machines, regardless of their theoretic agency
status. As a result of efforts to resolve this problem, there are insinuations of needed
additional psychological (emotional and cogn
itive) competence in cold moral machines.
What makes this endeavour of developing AMAs even harder is the complexity of the
technical, engineering aspect of their creation. Implementation approaches such as top-
down, bottom-up and hybrid approach aim to find the best way of developing fully
moral agents, but they encounter their own problems throughout this effort
The Knowledge Level in Cognitive Architectures: Current Limitations and Possible Developments
In this paper we identify and characterize an analysis of two problematic aspects affecting the representational level of cognitive architectures (CAs), namely: the limited size and the homogeneous typology of the encoded and processed knowledge.
We argue that such aspects may constitute not only a technological problem that, in our opinion, should be addressed in order to build articial agents able to exhibit intelligent behaviours in general scenarios, but also an epistemological one, since they limit the plausibility of the comparison of the CAs' knowledge representation and processing mechanisms with those executed by humans in their everyday activities. In the final part of the paper further directions of research will be explored, trying to address current limitations and
future challenges
A Cognitive Science Based Machine Learning Architecture
In an attempt to illustrate the application of cognitive science principles to hard AI problems in machine learning we propose the LIDA technology, a cognitive science based architecture capable of more human-like learning. A LIDA based software agent or cognitive robot will be capable of three fundamental, continuously active, humanlike learning mechanisms:\ud
1) perceptual learning, the learning of new objects, categories, relations, etc.,\ud
2) episodic learning of events, the what, where, and when,\ud
3) procedural learning, the learning of new actions and action sequences with which to accomplish new tasks. The paper argues for the use of modular components, each specializing in implementing individual facets of human and animal cognition, as a viable approach towards achieving general intelligence
Social Bots: Human-Like by Means of Human Control?
Social bots are currently regarded an influential but also somewhat
mysterious factor in public discourse and opinion making. They are considered
to be capable of massively distributing propaganda in social and online media
and their application is even suspected to be partly responsible for recent
election results. Astonishingly, the term `Social Bot' is not well defined and
different scientific disciplines use divergent definitions. This work starts
with a balanced definition attempt, before providing an overview of how social
bots actually work (taking the example of Twitter) and what their current
technical limitations are. Despite recent research progress in Deep Learning
and Big Data, there are many activities bots cannot handle well. We then
discuss how bot capabilities can be extended and controlled by integrating
humans into the process and reason that this is currently the most promising
way to go in order to realize effective interactions with other humans.Comment: 36 pages, 13 figure
Socionics: Sociological Concepts for Social Systems of Artificial (and Human) Agents
Socionics is an interdisciplinary approach with the objective to use sociological knowledge about the structures, mechanisms and processes of social interaction and social communication as a source of inspiration for the development of multi-agent systems, both for the purposes of engineering applications and of social theory construction and social simulation. The approach has been spelled out from 1998 on within the Socionics priority program funded by the German National research foundation. This special issue of the JASSS presents research results from five interdisciplinary projects of the Socionics program. The introduction gives an overview over the basic ideas of the Socionics approach and summarizes the work of these projects.Socionics, Sociology, Multi-Agent Systems, Artificial Social Systems, Hybrid Systems, Social Simulation
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