26,698 research outputs found
Generating expository dialogue from monologue: Motivation, corpus and preliminary rules
Generating expository dialogue from monologue is a task that poses an interesting and rewarding challenge for Natural Language Processing. This short paper has three aims: firstly, to motivate the importance of this task, both in terms of the benefits of expository dialogue as a way to present information and in terms of potential applications; secondly, to introduce a parallel corpus of monologues and dialogues which enables a data-driven approach to this challenge; and, finally, to describe work-in-progress on semi-automatic construction of Monologueto-Dialogue (M2D) generation rules
An Ensemble Model with Ranking for Social Dialogue
Open-domain social dialogue is one of the long-standing goals of Artificial
Intelligence. This year, the Amazon Alexa Prize challenge was announced for the
first time, where real customers get to rate systems developed by leading
universities worldwide. The aim of the challenge is to converse "coherently and
engagingly with humans on popular topics for 20 minutes". We describe our Alexa
Prize system (called 'Alana') consisting of an ensemble of bots, combining
rule-based and machine learning systems, and using a contextual ranking
mechanism to choose a system response. The ranker was trained on real user
feedback received during the competition, where we address the problem of how
to train on the noisy and sparse feedback obtained during the competition.Comment: NIPS 2017 Workshop on Conversational A
Computational Models (of Narrative) for Literary Studies
In the last decades a growing body of literature in Artificial Intelligence (AI) and Cognitive
Science (CS) has approached the problem of narrative understanding by means of computational
systems. Narrative, in fact, is an ubiquitous element in our everyday activity and
the ability to generate and understand stories, and their structures, is a crucial cue of our intelligence.
However, despite the fact that - from an historical standpoint - narrative (and narrative
structures) have been an important topic of investigation in both these areas, a more
comprehensive approach coupling them with narratology, digital humanities and literary
studies was still lacking.
With the aim of covering this empty space, in the last years, a multidisciplinary effort
has been made in order to create an international meeting open to computer scientist, psychologists,
digital humanists, linguists, narratologists etc.. This event has been named CMN
(for Computational Models of Narrative) and was launched in the 2009 by the MIT scholars
Mark A. Finlayson and Patrick H. Winston1
Survey on Evaluation Methods for Dialogue Systems
In this paper we survey the methods and concepts developed for the evaluation
of dialogue systems. Evaluation is a crucial part during the development
process. Often, dialogue systems are evaluated by means of human evaluations
and questionnaires. However, this tends to be very cost and time intensive.
Thus, much work has been put into finding methods, which allow to reduce the
involvement of human labour. In this survey, we present the main concepts and
methods. For this, we differentiate between the various classes of dialogue
systems (task-oriented dialogue systems, conversational dialogue systems, and
question-answering dialogue systems). We cover each class by introducing the
main technologies developed for the dialogue systems and then by presenting the
evaluation methods regarding this class
Natural Language Dialogue Service for Appointment Scheduling Agents
Appointment scheduling is a problem faced daily by many individuals and
organizations. Cooperating agent systems have been developed to partially
automate this task. In order to extend the circle of participants as far as
possible we advocate the use of natural language transmitted by e-mail. We
describe COSMA, a fully implemented German language server for existing
appointment scheduling agent systems. COSMA can cope with multiple dialogues in
parallel, and accounts for differences in dialogue behaviour between human and
machine agents. NL coverage of the sublanguage is achieved through both
corpus-based grammar development and the use of message extraction techniques.Comment: 8 or 9 pages, LaTeX; uses aclap.sty, epsf.te
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