2016 IEEE International Conference on Fuzzy Systems (FUZZ-IEEE) 2016
DOI: 10.1109/fuzz-ieee.2016.7737739
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How to talk to strangers: Generating medical reports for first-time users

Abstract: Abstract-We propose a novel approach for handling first-time users in the context of automatic report generation from timeseries data in the health domain. Handling first-time users is a common problem for Natural Language Generation (NLG) and interactive systems in general -the system cannot adapt to users without prior interaction or user knowledge. In this paper, we propose a novel framework for generating medical reports for first-time users, using multi-objective optimisation (MOO) to account for the pref… Show more

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Cited by 4 publications
(7 citation statements)
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References 34 publications
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“…30 minutes can be described as "time taken for lunch". Gkatzia et al [24] propose an approach to handling unknown first-time users in the context of automatic report generation from time-series data in the health domain. For this task, the uncertain factor is the users and their preferences to which the output needs to be adapted.…”
Section: Power and Williamsmentioning
confidence: 99%
“…30 minutes can be described as "time taken for lunch". Gkatzia et al [24] propose an approach to handling unknown first-time users in the context of automatic report generation from time-series data in the health domain. For this task, the uncertain factor is the users and their preferences to which the output needs to be adapted.…”
Section: Power and Williamsmentioning
confidence: 99%
“…Data-to-text systems, systems that "generate texts from non-linguistic data, such as sensor data and event logs" (Reiter, 2007, p. 97), have been around for a long time and still remain a popular topic for Natural Language Generation. Some of the datato-text language generation tasks that have been investigated recently include weather forecast generation (Belz and Kow, 2010;Angeli et al, 2010;Gkatzia et al, 2016a, among others), medical reports (Gatt et al, 2009;Gkatzia et al, 2016b;Schneider et al, 2013, among others), and financial reports (Nesterenko, 2016, among others).…”
Section: Related Workmentioning
confidence: 99%
“…Some of the datato-text language generation tasks that have been investigated recently include weather forecast generation (Belz and Kow, 2010;Angeli et al, 2010;Gkatzia et al, 2016a, among others), medical reports (Gatt et al, 2009;Gkatzia et al, 2016b;Schneider et al, 2013, among others), and financial reports (Nesterenko, 2016, among others).…”
Section: Related Workmentioning
confidence: 99%
“…For example, an NLG system can read sensor data and produce a comprehensive textual summary. Previous research on generation from time-series data has been conducted in several domains such as weather forecasts (Sripada et al, 2004;Konstas and Lapata, 2012;Gkatzia et al, 2016a), health informatics (Gatt et al, 2009;Gkatzia et al, 2016b), stock market summaries (Kukich, 1983) and assistive technology systems (Black et al, 2010). These systems have employed different content selection methods, which are reviewed in Section 4 and 5.…”
Section: Achieving the Communicative Goalmentioning
confidence: 99%
“…This issue has been raised by several researchers, such as (Janarthanam, 2011;Han et al, 2014), to name a few. Previous approaches to tackling this issue include the use of latent User Models (Han et al, 2014), initial questionnaires to derive information by the user (Reiter et al, 1999) and tackling first-time users using multi-objective optimisation (Gkatzia et al, 2016b).…”
Section: Challenges For Content Selection Inmentioning
confidence: 99%