Open main menu
Home
Random
Recent changes
Special pages
Community portal
Preferences
About Wikipedia
Disclaimers
Incubator escapee wiki
Search
User menu
Talk
Dark mode
Contributions
Create account
Log in
Editing
Essentialism
(section)
Warning:
You are not logged in. Your IP address will be publicly visible if you make any edits. If you
log in
or
create an account
, your edits will be attributed to your username, along with other benefits.
Anti-spam check. Do
not
fill this in!
===Machine learning=== Pelillo argues that traditional [[machine learning]] techniques often align with an essentialist paradigm by relying on [[feature (machine learning)|features]] - properties assumed to be essential for [[classification]] tasks. For instance, [[pattern recognition]], which attempts to extract essential attributes from data, is described as inherently essentialist since it presupposes that objects have stable, identifiable essences that define their categories. This perspective extends to [[similarity learning|similarity-based]] approaches, which use [[prototype theory]] to establish relationships within data by grouping instances around central prototypes that exhibit the "essence" of a category.<ref>{{cite journal|last=Pelillo|first=M.|title=Introduction: The SIMBAD Project|journal=Similarity-Based Pattern Analysis and Recognition|editor=M. Pelillo|year=2013|volume=Advances in Computer Vision and Pattern Recognition|pages=1–10|doi=10.1007/978-1-4471-5628-4_1}}</ref> Expanding on this, Pelillo and Scantamburlo highlight that certain machine-learning scenarios, such as when data is highly dimensional or features are poorly defined, challenge the essentialist framework. They advocate for alternative paradigms that consider relational and [[Context (linguistics)|context]]ual [[information]] instead of isolated feature analysis. This relational focus aligns with anti-essentialist stances, which view categories as dynamic and context-dependent rather than fixed.<ref>{{cite journal|last=Pelillo|first=M.|author2=Scantamburlo, T.|title=How Mature Is the Field of Machine Learning?|journal=AI*IA 2013: Advances in Artificial Intelligence|year=2013|volume=8249|pages=121–132|doi=10.1007/978-3-319-03524-6_11}}</ref> Šekrst and Skansi build on these ideas, noting that [[supervised learning]], by utilizing labeled [[dataset]]s, reflects essentialist tendencies since it relies on predefined human-defined categories. However, they argue that this does not commit machine learning to an ontological stance on essentialism. Instead, they propose that the categories used in supervised learning are human-constructed in [[feature selection]] processes and reflect [[epistemology|epistemological]] practices rather than [[metaphysics|metaphysical]] truths. Similarly, [[unsupervised learning]]'s [[Cluster analysis|clustering]] and similarity-based approaches often resemble prototypical reasoning but do not inherently affirm or deny essentialism, focusing instead on [[pragmatics|pragmatic]] task performance.<ref>{{cite journal|last=Šekrst|first=K.|author2=Skansi, S.|title=Machine Learning and Essentialism|journal=Philosophical Problems in Science (Zagadnienia Filozoficzne w Nauce)|year=2022|volume=73|pages=171–196|url=https://philpapers.org/rec/EKRMLA|doi=}}</ref>
Edit summary
(Briefly describe your changes)
By publishing changes, you agree to the
Terms of Use
, and you irrevocably agree to release your contribution under the
CC BY-SA 4.0 License
and the
GFDL
. You agree that a hyperlink or URL is sufficient attribution under the Creative Commons license.
Cancel
Editing help
(opens in new window)