John with waffle

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3,472 reputation
1127
bio website john-benjamin-cassel.com
location Champaign, IL
age 34
visits member for 5 years, 11 months
seen Mar 10 at 19:03

I’ve been working on a career combining scenario modeling with machine learning. I have experience in the practical problem of managing, processing, and representing large volumes of data. I'm very interested in problems in the long-term risks in infrastructure: manufacturing, transportation, energy, and agriculture. I hope to contribute to technologies leading to the more effective governance of risk.

** Specialties **

Understanding of temporal processes: temporal logic, time-series statistics, online machine-learning, causal processes, and systems analysis.

Software: algorithm design, software engineering, and data modeling.

Representing information: through prose, diagrams, schedules, maps, information visualizations, blueprints, probabilistic models, simulations, data structures, databases, and domain-specific programming languages.

Manufacturing: production planning, mechatronics, and manufacturing processes.


Jun
7
awarded  Nice Answer
Apr
1
comment Examples of what Lisp's macros can be used for
That's fair enough. It's one more step to avoid reading complexity while writing the code while being efficient at running it.
Apr
1
comment Examples of what Lisp's macros can be used for
But what is it about macros that make them superior to write domain-specific languages over ordinary functions?
Mar
30
comment What algorithms are suitable for this simple machine learning problem?
Yes, certainly don't let that hold one back from using RBM techniques like semantic hashing. At the same time, if you have the luxury of preprocessing, then do.
Mar
28
comment What algorithms are suitable for this simple machine learning problem?
Actually, if you read the semantic hashing paper, something they are a little sneaky about is they do some preprocessing to limit the number of tags they are hashing to about the 1000 most important words. If you have to continue to learn "on the fly", you may have unexpected problems.
Mar
28
revised What algorithms are suitable for this simple machine learning problem?
added example
Mar
28
comment What algorithms are suitable for this simple machine learning problem?
I did also think about recommending semantic hashing, or something similar that also involves restricted Boltzman machines. The thing is, I wasn't sure when I would stop having to add nodes for similar people, and a vector space model would let me add people in a scalable way without having to represent them explicitly. Nonetheless, I give you a point, although I would still do it my way.
Mar
28
revised Algorithm to generate numerical concept hierarchy
qualifications from comments
Mar
26
comment What algorithms are suitable for this simple machine learning problem?
This is essentially the easiest implementation of the vector-space approach. Congratulations, you now know machine learning.
Mar
26
revised How to implement fact related to false positive vs. false negative balance in neural network?
example for first approach
Mar
25
revised What algorithms are suitable for this simple machine learning problem?
a qualification
Mar
25
answered What algorithms are suitable for this simple machine learning problem?
Mar
25
comment Algorithm to generate numerical concept hierarchy
It's built into ArcGIS, if you have access to that.
Mar
25
answered Algorithm to generate numerical concept hierarchy
Mar
17
answered Algorithm to find the next number in a sequence
Mar
6
comment Percentage Similarity Analysis (Java)
Yes, including inverse weightings for frequency is a good way to go. Stop word removal is likely the first-order approximation to this.
Mar
6
comment Percentage Similarity Analysis (Java)
If you are truly running out of time, my advice is 1. remove the stop-words 2. calculate either/both % for bag-of-words and word-order dependent via edit dist (do whichever seems easiest to implement first) 3. create percentage thresholds (as with a simple if-else) 4. compare actual plagarized texts versus non and fix the percentages manually (if you have a lot of samples, first do this tuning on a subset of the documents, and use the rest to see how well this works). My advice is to iterate to the end as fast as you can, and then figure out how to be more sophisticated as you have time
Mar
6
answered Percentage Similarity Analysis (Java)
Mar
3
comment Which data mining algorithm would you suggest for this particular scenario?
At this point I haven't said very much about training vs. testing and the like. Of course that applies to feature formation as well!
Mar
2
comment who have used PedestrianDetectionHoG_NET2005 I need to know the configure process
Which object detection software?