guidelines or some assistance, which are also in line
with some words very common in comments for
these videos, such as “help”, as seen before.
With this study, it was possible to verify that the
comments of educational videos on YouTube are
also a learning tool that complements the tutorship
provided by the video. For those who seek
knowledge on YouTube videos, the comments
section should also be a source of educational
resources. Also, educators who produce content for
YouTube should be aware of the comments section.
5 LIMITATIONS AND FUTURE
WORK
This research has some limitations that open future
opportunities of research. First, considering that the
kind of videos selected may have intrinsic and
unknown characteristics that might have conditioned
this study, the study must be replicated using other
videos and comments.
The only criterion used to select the videos
obtained with the search terms was the number of
views. We did not examine the impact of video
duration or their academic or not provenience.
Another factor that can have an impact in the
results is the publication date or even some
characteristics of their authors, for instance, their
native language.
More experimentation and empirical research
may lead to a better understanding on how people
comment on instructional videos or even how these
resources are used. This is important to improve
instructional videos and enhance users’ experiences.
However, issues related to privacy and ethics must
always be considered when dealing with users’
observations even when they are publicly available.
REFERENCES
Azevedo, I., Carrapatoso, E., Carvalho, C., 2014.
Supporting learning through tagging systems, in:
Jovanovic, J., Chiong, R. (Eds.), Technological and
Social Environments for Interactive Learning.
Informing Science Press, Santa Rosa, CA, USA.
Baccianella, S., Esuli, A., Sebastiani, F., 2010.
SentiWordNet 3.0: An Enhanced Lexical Resource for
Sentiment Analysis and Opinion Mining, in:
Proceedings of the Seventh Conference on
International Language Resources and Evaluation. pp.
2200–2204.
Cambria, E., White, B., 2014. Jumping NLP curves: a
review of natural language processing research. IEEE
Computational Intelligence Magazine 9, 48–57.
Fritz, B., 2016. OMDb API: The Open Movie Database
[WWW Document]. URL http://www.omdbapi.com.
Hogenboom, A., Bal, D., Frasincar, F., Bal, M., De Jong,
F., Kaymak, U., 2015. Exploiting Emoticons in
Polarity Classification of Text. Journal of Web
Engineering 14, 22–40.
Lehnert, W.G., Ringle, M.H. (Eds.), 2014. Strategies for
natural language processing. Psychology Press.
Liu, B., 2012. Sentiment analysis and opinion mining.
Synthesis lectures on human language technologies 5,
1–167.
Marsick, V.J., Watkins, K., 1990. Informal and Incidental
Learning in the Workplace. Routledge, London and
New York.
OFFICIALPSY, 2012. Psy - Gangnam Style [WWW
Document]. URL https://www.youtube.com/
watch?v=9bZkp7q19f0.
Ramey-Gassert, L., 1997. Learning science beyond the
classroom. The Elementary School Journal 433–450.
Smith, M.K., 2008. Informal learning [WWW Document].
The encyclopaedia of informal education. URL
http://infed.org/mobi/informal-learning-theory-
practice-and-experience.
Susarla, A., Oh, J.-H., Tan, Y., 2012. Social networks and
the diffusion of user-generated content: Evidence from
YouTube. Information Systems Research 23, 23–41.
Tan, E., Pearce, N., 2011. Open education videos in the
classroom: exploring the opportunities and barriers to
the use of YouTube in teaching introductory
sociology, in: Proceedings of the 18th International
Conference of the Association for Learning
Technology. University of Leeds, UK.
Wattenhofer, M., Wattenhofer, R., Zhu, Z., 2012. The
YouTube Social Network, in: Proceedings of the Sixth
International AAAI Conference on Weblogs and
Social Media (ICWSM 2012).
Weaver, A.J., Zelenkauskaite, A., Samson, L., 2012. The
(non) violent world of YouTube: Content trends in
web video. Journal of Communication 62, 1065–1083.