Cutting DeepMind’s data error/loss rate

skascience_darkenergy_300dpi (2)I have been reading about Google’s DeepMind “Neural Turing Machine” at [link] MIT Tech Review and have a suggestion regarding the loss rate:

(Quote:) The DeepMind work involves first constructing the device and then putting it through its paces. Their experiments consist of a number of tests to see whether, having trained a Neural Turing Machine to perform a certain task, it could then extend this ability to bigger or more complex tasks. “For example, we were curious to see if a network that had been trained to copy sequences of length up to 20 could copy a sequence of length 100 with no further training,” say Graves and co.

It turns out that the neural Turing machine learns to copy sequences of lengths up to 20 more or less perfectly. And it then copies sequences of lengths 30 and 50 with very few mistakes. For a sequence of length 120, errors begin to creep in, including one error in which a single term is duplicated and so pushes all of the following terms one step back. “Despite being subjectively close to a correct copy, this leads to a high loss,” say the team

Could we assign a positive value to each error and a negative value to each absolutely correct copy, and then develop a reducing error rate from the positive value rate?

Also, would Synomal Superpositional Clouds (SSCs) help assign high value to errors? There is writing about SSC’s here.

The learning brain experiences the wicked problem of survival every moment — and for this process perhaps error-minimizing may be more important than exact copying?  

by David Huer


Image by space-science-society

Every SmartPhone a Drone?

quadcopter Many consumer drones use a purpose-built camera system. During brainstorming at Wednesday’s Vancouver Innovation Labs meetup, we started wondering . . .

Why not use a smartphone? 


Comparing the iPhone 6 Smartphone with GoPro proved interesting: Just like the GoPro/drone-copter combo, smartphones have an on-board accelerometer, inclinometer, GPS coordinate system, WiFi remote controller, high megapixel camera, and waterproof housing options.  Combo assemblies not to scale.

dronehome-001

 

dronehome-002

GoPro wins on $price when compared to an iPhone.

But weight-wise, a high quality smartphone wins hand’s down.


And consider operating cost over the life of the drone:

Will amortizing a “lower weight imaging solution” (smartphone with high-quality lens and upgraded parts) make smartphones the better choice overall?

And it does beg the question, what happens when a smartphone with pure focus on high quality imaging and WiFi remote control comes on the market at a price-point near GoPro? 

And if Amazon’s Prime Air drone package delivery venture gets approval from national aviation authorities, could a lower price Smartphone Drone Wayfinding Controller muscle its way in on the action?

– by David Huer

https://www.youtube.com/watch?v=98BIu9dpwHU

 


Images & Sources:

http://pixabay.com/en/drone-espionage-camera-spy-nsa-407379/
http://www.cellphonebeat.com/10-camera-phones-compliment-photographers-creed.html
http://www.cellphonebeat.com/10-camera-phones-compliment-photographers-creed.html
http://www.bitrebels.com/technology/iphone-5-camera-accessory-unique/
https://www.apple.com/iphone-6/specs/
http://www.amazon.ca/DJI-Phantom-Aerial-Drone-Quadcopter/dp/B00AGOSQI8
http://www.kunstform.org/en/gopro-battery-bacpac-battery-p-4830
http://www.lifeproof.com/shop/us_en/iphone-5s/iphone-5s-case-2014-colors/?color=Lime+%2F+Black
https://shop.gopro.com/
http://www.amazon.com/b?ref_=tsm_1_tw_s_amzn_mx3eqp&node=8037720011
https://www.youtube.com/watch?v=98BIu9dpwHU