2020
DOI: 10.1145/3392837
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Estimating Conversational Styles in Conversational Microtask Crowdsourcing

Abstract: Crowdsourcing marketplaces have provided a large number of opportunities for online workers to earn a living. To improve satisfaction and engagement of such workers, who are vital for the sustainability of the marketplaces, recent works have used conversational interfaces to support the execution of a variety of crowdsourcing tasks. The rationale behind using conversational interfaces stems from the potential engagement that conversation can stimulate. Prior works in psychology have also shown that conversatio… Show more

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Cited by 12 publications
(4 citation statements)
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“…Our experimental findings revealed that workers with specific conversational styles have significantly higher output quality, higher user engagement and less cognitive task load while they are completing a difficult task, and have less task execution time in general. The findings have important implications on worker performance prediction and quality-aware task scheduling in microtask crowdsourcing [3].…”
Section: Analyzing Conversational Styles and Workers Performancementioning
confidence: 93%
See 1 more Smart Citation
“…Our experimental findings revealed that workers with specific conversational styles have significantly higher output quality, higher user engagement and less cognitive task load while they are completing a difficult task, and have less task execution time in general. The findings have important implications on worker performance prediction and quality-aware task scheduling in microtask crowdsourcing [3].…”
Section: Analyzing Conversational Styles and Workers Performancementioning
confidence: 93%
“…This demo is presented for the system described in our previous work [3]. The code is available online for the benefit of the community (https://github.com/qiusihang/ticktalkturk).…”
Section: Introductionmentioning
confidence: 99%
“…We will compare conversational crowdsourcing with the traditional web-based microtask crowdsourcing to explain the advantages of conversational crowdsourcing in terms of increasing user satisfaction, improving user engagement, and decreasing perceived workload [15,20]. Next, we will explain the effect of using different conversational styles [27,28], and share empirical insights into how we can define a conversational style, how to estimate the conversational style, and how to exploit the conversational style to facilitate an effective task design [19]. Finally, we will showcase conversational crowdsourcing in a variety of domains, such as supporting microtask execution and aiding informational web search [22].…”
Section: Cuis For Crowd Computingmentioning
confidence: 99%
“…It was found that crowd workers exhibited an overall satisfaction while working with the chatbot, and the results produced were of a better quality compared to the web interface (Mavridis et al 2019). Others studied the impact of different conversational styles employed in a text-based conversational agent on the worker performance and engagement, and proposed models to estimate the conversational styles of workers (Qiu, Gadiraju, and Bozzon 2020a;2020b). Results indicated that conversational agents with different conversational styles did not impact the output quality, but they had positive effects on worker engagement and worker retention.…”
Section: Crowd-powered Conversational Interfacesmentioning
confidence: 99%