ニューラルネットワーク (Japanese Wikipedia)

Analysis of information sources in references of the Wikipedia article "ニューラルネットワーク" in Japanese language version.

refsWebsite
Global rank Japanese rank
2nd place
6th place
1st place
1st place
69th place
227th place
4th place
24th place
5th place
19th place
14th place
320th place
18th place
107th place
low place
low place
low place
low place
low place
low place
934th place
57th place
1,343rd place
2,824th place
6th place
146th place
low place
low place
3rd place
61st place
149th place
558th place
low place
low place
652nd place
1,307th place
102nd place
78th place
low place
low place
low place
low place
153rd place
260th place
274th place
596th place
1,425th place
5,216th place
26th place
275th place
1,672nd place
4,310th place
610th place
915th place
low place
low place
low place
low place
415th place
1,150th place
234th place
363rd place
6,505th place
low place
5,022nd place
low place
731st place
1,777th place
938th place
6,114th place
3,341st place
low place
1,734th place
6,532nd place
low place
low place
43rd place
1,892nd place
179th place
608th place
857th place
1,005th place
1,185th place
2,667th place
low place
low place
low place
low place
243rd place
1,140th place
low place
low place
low place
low place
low place
low place
low place
low place
low place
low place
2,446th place
7,972nd place
4,667th place
9,356th place
8,759th place
618th place
low place
low place
2,503rd place
2,605th place

acm.org

dl.acm.org

aist.go.jp

staff.aist.go.jp

archive.org

archive.today

arxiv.org

books.google.com

core.ac.uk

deeplearningbook.org

degruyter.com

doi.org

drive.google.com

elsevier.com

linkinghub.elsevier.com

extremetech.com

gmdh.net

google.co.jp

books.google.co.jp

googleusercontent.com

static.googleusercontent.com

handle.net

hdl.handle.net

harvard.edu

ui.adsabs.harvard.edu

idsia.ch

people.idsia.ch

sferics.idsia.ch

ieee.org

ieeexplore.ieee.org

ijcai.org

jstor.org

  • Olazaran, Mikel (1996). “A Sociological Study of the Official History of the Perceptrons Controversy”. Social Studies of Science 26 (3): 611–659. doi:10.1177/030631296026003005. JSTOR 285702. 

kit.edu

isl.anthropomatik.kit.edu

kurzweilai.net

lecun.com

yann.lecun.com

microsoft.com

blogs.microsoft.com

learn.microsoft.com

mit.edu

direct.mit.edu

mlr.press

proceedings.mlr.press

nature.com

nih.gov

pubmed.ncbi.nlm.nih.gov

ncbi.nlm.nih.gov

pmc.ncbi.nlm.nih.gov

nips.cc

papers.nips.cc

nvidia.com

developer.nvidia.com

  • "TensorRT can optimize and deploy applications to the data center, as well as embedded and automotive environments. It powers key NVIDIA solutions" NVIDIA TensorRT. NVIDIA.

onnxruntime.ai

oxfordreference.com

paperswithcode.com

pytorch.org

  • "Quantizing a network means converting it to use a reduced precision integer representation for the weights and/or activations." DYNAMIC QUANTIZATION. PyTorch.
  • "Static quantization quantizes the weights and activations of the model. ... It requires calibration with a representative dataset to determine optimal quantization parameters for activations." QUANTIZATION. PyTorch.
  • "with dynamic quantization ... determine the scale factor for activations dynamically based on the data range observed at runtime." DYNAMIC QUANTIZATION. PyTorch.
  • "The model parameters ... are converted ahead of time and stored in INT8 form." DYNAMIC QUANTIZATION. PyTorch.
  • "Simulate the quantize and dequantize operations in training time." FAKEQUANTIZE. PyTorch. 2022-03-15閲覧.

sagepub.com

journals.sagepub.com

sciencedirect.com

sciencemag.org

semiconportal.com

springer.com

link.springer.com

stanford.edu

syncedreview.com

tamu.edu

people.engr.tamu.edu

tensorflow.org

  • "Quantization works by reducing the precision of the numbers used to represent a model's parameters, which by default are 32-bit floating point numbers." Model optimization. TensorFlow.
  • "Less memory usage: Smaller models use less RAM when they are run, which frees up memory for other parts of your application to use, and can translate to better performance and stability." Model optimization. TensorFlow.

toronto.edu

cs.toronto.edu

ufrgs.br

inf.ufrgs.br

umass.edu

web.cs.umass.edu

  • Bozinovski S. (1995) "Neuro genetic agents and structural theory of self-reinforcement learning systems". CMPSCI Technical Report 95-107, University of Massachusetts at Amherst [1] Archived 2024-10-08 at the Wayback Machine.

utah.edu

cs.utah.edu

web.archive.org

werbos.com

wikidata.org

wikipedia.org

en.wikipedia.org

witness.org

lab.witness.org

worldcat.org

search.worldcat.org