OUDL: Introduction to Machine Learning

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Kyle Oba

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Jun 19, 2012, 12:43:25 AM6/19/12
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Kevin McCarthy will present a gentle introduction to Machine Learning.

Note day and location change, just for this meeting.

Tuesday, 6/26, 7pm - Interisland Terminal R/D 

691 Auahi St., Honolulu, HI 96813 - http://goo.gl/maps/aTvk

RSVP Here: http://www.meetup.com/dynamic/events/69285152/

Have you ever wished your computer could do more than what you tell it
to do explicitly?  Maybe you want to write a recommendation engine
like the one Amazon and Netflix use to recommend similar products, or
maybe you just want to build Skynet. The goal of this talk is to
give a broad but shallow overview of machine learning techniques and
applications.  Topics covered will (probably) include:

- What is machine learning?
- Supervised vs unsupervised machine learning
- Linear Regression
- Partitioning your data into training, test, and cross-validation sets
- Bias/variance tradeoff
- Regularization
- Logistic Regression
- Clustering
- Brief overview of more advanced algorithms such as neural networks
and support vector machines
- Advanced applications such as digit recognition and collaborative filtering

Should be fun!

More on Machine Learning:

Machine learning, a branch of artificial intelligence, is a scientific discipline concerned with the design and development of algorithms that allow computers to evolve behaviors based on empirical data, such as from sensor data or databases. A learner can take advantage of examples (data) to capture characteristics of interest of their unknown underlying probability distribution. Data can be seen as examples that illustrate relations between observed variables. A major focus of machine learning research is to automatically learn to recognize complex patterns and make intelligent decisions based on data; the difficulty lies in the fact that the set of all possible behaviors given all possible inputs is too large to be covered by the set of observed examples (training data). Hence the learner must generalize from the given examples, so as to be able to produce a useful output in new cases.

From Wikipedia


Bryan Wolfford

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Jun 19, 2012, 5:40:23 AM6/19/12
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Did you do the ML-Class from Standford under Dr. Ng as well?

Kevin McCarthy

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Jun 19, 2012, 3:10:42 PM6/19/12
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Yes, I took that class and really enjoyed it. I'll be basing much of
my talk on his materials.

Kevin

Bryan Wolfford

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Jun 19, 2012, 7:18:58 PM6/19/12
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Yes the class was very enjoyable, indeed!

Kyle Oba

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Jun 23, 2012, 7:35:53 PM6/23/12
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Just a quick note that: before the Machine Learning talk, Will Ting will present a lightning talk on Autojump.

The rest of the program remains the same.

Kyle Oba

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Jun 26, 2012, 1:43:29 PM6/26/12
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This just in.  We'll be serving Fendu Boulangerie pastries at the OUDL talk tonight.

Machine Learning RSVP: http://www.meetup.com/dynamic/

That is all.

Kyle

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