[Air-L] emotion detection machine?
Stuart Shulman
stuart.shulman at gmail.com
Thu Sep 5 04:47:16 PDT 2019
Some tools for this work are born in academic research labs instead of
corporate meeting rooms. For more than a decade we have offered free and
commercial web-based tools for content labeling and annotator measurement
in an academic research setting. To date there are 400+ interdisciplinary
and multilingual citations:
https://discovertext.com/2018/03/31/scholarly-citations-of-the-coding-analysis-toolkit/
https://discovertext.com/publications/
Free demos:
https://calendly.com/discovertext
~Stu
*Stu Shulman* <https://twitter.com/StuartWShulman>U.S. Soccer
Federation C-Licensed Coach
Valeo FC & Capacidad <http://capacidadprograms.org/?page_id=13> Volunteer Coach
*Is your player ready to give back to the game?
*Contact Coach Stu about fall 2019 volunteer efforts.
[image: Capacidad] <http://capacidadprograms.org/?page_id=13>
On Thu, Sep 5, 2019 at 7:25 AM Jill Walker Rettberg <
Jill.Walker.Rettberg at uib.no> wrote:
> Dear Charles,
>
> I'm not an expert, but I think she should be talking with linguists - and
> I think that what she's looking for is typically called sentiment analysis,
> not emotion analysis. There are probably tools for social media marketing
> that might be more readily accessible, but probably less scientifically
> transparent.
> https://en.wikipedia.org/wiki/Sentiment_analysis
>
> Jill
>
> Air-L på vegne av Charles M. Ess <air-l-bounces at listserv.aoir.org på
> vegne av c.m.ess at media.uio.no> skrev følgende den 05.09.2019, 12:53:
>
> Dear colleagues,
>
> One of our students is wanting to analyze emotional content in in the
> comment fields of a major newspaper vis-a-vis specific hot-button
> issues.
>
> She has a good tool (I think) for scrapping the data - but she is
> stymied over the choice of an emotion analysis tool. She has looked at
> Senpy (http://senpy.gsi.upm.es/#test) and Twinword
> <https://www.twinword.com/api/emotion-analysis.php> - the latter
> seems
> the most accurate, but it is also expensive.
> She has recently discovered DepecheMood emotion lexicons (Staiano, J.,
> &
> Guerini, M. (2014). Depechemood: a lexicon for emotion analysis from
> crowd-annotated news. arXiv preprint arXiv:1405.1605.) - but this
> suffers from a lack of clarity in terms of explaining its emotional
> categories: awe, indifference, sad, amusement , annoyance, joy, fear
> and
> anger.
>
> For my part, I am entirely clueless. Any suggestions that she might
> pursue would be greatly appreciated.
>
> best,
> - charles ess
> --
> Professor in Media Studies
> Department of Media and Communication
> University of Oslo
> <http://www.hf.uio.no/imk/english/people/aca/charlees/index.html>
>
> Postboks 1093
> Blindern 0317
> Oslo, Norway
> c.m.ess at media.uio.no
> _______________________________________________
> The Air-L at listserv.aoir.org mailing list
> is provided by the Association of Internet Researchers http://aoir.org
> Subscribe, change options or unsubscribe at:
> http://listserv.aoir.org/listinfo.cgi/air-l-aoir.org
>
> Join the Association of Internet Researchers:
> http://www.aoir.org/
>
>
> _______________________________________________
> The Air-L at listserv.aoir.org mailing list
> is provided by the Association of Internet Researchers http://aoir.org
> Subscribe, change options or unsubscribe at:
> http://listserv.aoir.org/listinfo.cgi/air-l-aoir.org
>
> Join the Association of Internet Researchers:
> http://www.aoir.org/
More information about the Air-L
mailing list