12,258 research outputs found
Towards an Indexical Model of Situated Language Comprehension for Cognitive Agents in Physical Worlds
We propose a computational model of situated language comprehension based on
the Indexical Hypothesis that generates meaning representations by translating
amodal linguistic symbols to modal representations of beliefs, knowledge, and
experience external to the linguistic system. This Indexical Model incorporates
multiple information sources, including perceptions, domain knowledge, and
short-term and long-term experiences during comprehension. We show that
exploiting diverse information sources can alleviate ambiguities that arise
from contextual use of underspecific referring expressions and unexpressed
argument alternations of verbs. The model is being used to support linguistic
interactions in Rosie, an agent implemented in Soar that learns from
instruction.Comment: Advances in Cognitive Systems 3 (2014
Word sense disambiguation and information retrieval
It has often been thought that word sense ambiguity is a cause of poor performance in Information Retrieval
(IR) systems. The belief is that if ambiguous words can be correctly disambiguated, IR performance will
increase. However, recent research into the application of a word sense disambiguator to an IR system failed
to show any performance increase. From these results it has become clear that more basic research is needed
to investigate the relationship between sense ambiguity, disambiguation, and IR.
Using a technique that introduces additional sense ambiguity into a collection, this paper presents research
that goes beyond previous work in this field to reveal the influence that ambiguity and disambiguation have
on a probabilistic IR system. We conclude that word sense ambiguity is only problematic to an IR system
when it is retrieving from very short queries. In addition we argue that if a word sense disambiguator is to
be of any use to an IR system, the disambiguator must be able to resolve word senses to a high degree of
accuracy
Word sense disambiguation and information retrieval
It has often been thought that word sense ambiguity is a cause of poor performance in Information Retrieval
(IR) systems. The belief is that if ambiguous words can be correctly disambiguated, IR performance will
increase. However, recent research into the application of a word sense disambiguator to an IR system failed
to show any performance increase. From these results it has become clear that more basic research is needed
to investigate the relationship between sense ambiguity, disambiguation, and IR.
Using a technique that introduces additional sense ambiguity into a collection, this paper presents research
that goes beyond previous work in this field to reveal the influence that ambiguity and disambiguation have
on a probabilistic IR system. We conclude that word sense ambiguity is only problematic to an IR system
when it is retrieving from very short queries. In addition we argue that if a word sense disambiguator is to
be of any use to an IR system, the disambiguator must be able to resolve word senses to a high degree of
accuracy
Abmash: Mashing Up Legacy Web Applications by Automated Imitation of Human Actions
Many business web-based applications do not offer applications programming
interfaces (APIs) to enable other applications to access their data and
functions in a programmatic manner. This makes their composition difficult (for
instance to synchronize data between two applications). To address this
challenge, this paper presents Abmash, an approach to facilitate the
integration of such legacy web applications by automatically imitating human
interactions with them. By automatically interacting with the graphical user
interface (GUI) of web applications, the system supports all forms of
integrations including bi-directional interactions and is able to interact with
AJAX-based applications. Furthermore, the integration programs are easy to
write since they deal with end-user, visual user-interface elements. The
integration code is simple enough to be called a "mashup".Comment: Software: Practice and Experience (2013)
A Patient\u27s Guide to Smart Research
Patients may not know where to look when researching a health issue. This may lead them to resources that are not supported by research and may become an issue for their own health. Some websites may be filled with medical jargon, which can potentially exacerbate anxiety about a particular condition or cause concern for unrelated health issues. A handout compiling a list of resources would be helpful to providers and beneficial to patients.https://scholarworks.uvm.edu/fmclerk/1416/thumbnail.jp
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