Crowdsourced dataset to study the generation and impact of text highlighting in classification tasks
J. Ramírez, M. Baez Gonzalez, F. Casati, B. Benatallah, BMC Research Notes 12 (2019).
Download
Es wurde kein Volltext hochgeladen. Nur Publikationsnachweis!
Artikel
| Veröffentlicht
| Englisch
Autor*in
Ramírez, Jorge;
Baez Gonzalez, Marcos ;
Casati, Fabio;
Benatallah, Boualem
Abstract
Objectives -
Text classification is a recurrent goal in machine learning projects and a typical task in crowdsourcing platforms. Hybrid approaches, leveraging crowdsourcing and machine learning, work better than either in isolation and help to reduce crowdsourcing costs. One way to mix crowd and machine efforts is to have algorithms highlight passages from texts and feed these to the crowd for classification. In this paper, we present a dataset to study text highlighting generation and its impact on document classification.
<br />
Data description -
The dataset was created through two series of experiments where we first asked workers to (i) classify documents according to a relevance question and to highlight parts of the text that supported their decision, and on a second phase, (ii) to assess document relevance but supported by text highlighting of varying quality (six human-generated and six machine-generated highlighting conditions). The dataset features documents from two application domains: systematic literature reviews and product reviews, three document sizes, and three relevance questions of different levels of difficulty. We expect this dataset of 27,711 individual judgments from 1851 workers to benefit not only this specific problem domain, but the larger class of classification problems where crowdsourced datasets with individual judgments are scarce.
Erscheinungsjahr
Zeitschriftentitel
BMC Research Notes
Band
12
Zeitschriftennummer
1
Artikelnummer
820
eISSN
FH-PUB-ID
Zitieren
Ramírez, Jorge ; Baez Gonzalez, Marcos ; Casati, Fabio ; Benatallah, Boualem: Crowdsourced dataset to study the generation and impact of text highlighting in classification tasks. In: BMC Research Notes Bd. 12, Springer Science and Business Media LLC (2019), Nr. 1
Ramírez J, Baez Gonzalez M, Casati F, Benatallah B. Crowdsourced dataset to study the generation and impact of text highlighting in classification tasks. BMC Research Notes. 2019;12(1). doi:10.1186/s13104-019-4858-z
Ramírez, J., Baez Gonzalez, M., Casati, F., & Benatallah, B. (2019). Crowdsourced dataset to study the generation and impact of text highlighting in classification tasks. BMC Research Notes, 12(1). https://doi.org/10.1186/s13104-019-4858-z
@article{Ramírez_Baez Gonzalez_Casati_Benatallah_2019, title={Crowdsourced dataset to study the generation and impact of text highlighting in classification tasks}, volume={12}, DOI={10.1186/s13104-019-4858-z}, number={1820}, journal={BMC Research Notes}, publisher={Springer Science and Business Media LLC}, author={Ramírez, Jorge and Baez Gonzalez, Marcos and Casati, Fabio and Benatallah, Boualem}, year={2019} }
Ramírez, Jorge, Marcos Baez Gonzalez, Fabio Casati, and Boualem Benatallah. “Crowdsourced Dataset to Study the Generation and Impact of Text Highlighting in Classification Tasks.” BMC Research Notes 12, no. 1 (2019). https://doi.org/10.1186/s13104-019-4858-z.
J. Ramírez, M. Baez Gonzalez, F. Casati, and B. Benatallah, “Crowdsourced dataset to study the generation and impact of text highlighting in classification tasks,” BMC Research Notes, vol. 12, no. 1, 2019.
Ramírez, Jorge, et al. “Crowdsourced Dataset to Study the Generation and Impact of Text Highlighting in Classification Tasks.” BMC Research Notes, vol. 12, no. 1, 820, Springer Science and Business Media LLC, 2019, doi:10.1186/s13104-019-4858-z.