Název: Optimalizace neuronové sítě
Další názvy: Optimization of neural networks
Autoři: Bulín, Martin
Vedoucí práce/školitel: Šmídl Luboš, Ing. Ph.D.
Oponent: Švec Jan, Ing. Ph.D.
Datum vydání: 2017
Nakladatel: Západočeská univerzita v Plzni
Typ dokumentu: diplomová práce
URI: http://hdl.handle.net/11025/27096
Klíčová slova: network pruning;minimal network structure;network demystification;weight significance;removing synapses;network pathing;feature energy;network optimization;neural network
Klíčová slova v dalším jazyce: network pruning;minimal network structure;network demystification;weight significance;removing synapses;network pathing;feature energy;network optimization;neural network
Abstrakt: Neural networks can be trained to work well for particular tasks, but hardly ever we know why they work so well. Due to the complicated architectures and an enormous number of parameters we usually have well-working black-boxes and it is hard if not impossible to make targeted changes in a trained model. In this thesis, we focus on network optimization, specifically we make networks small and simple by removing unimportant synapses, while keeping the classification accuracy of the original fully-connected networks. Based on our experience, at least 90% of the synapses are usually redundant in fully-connected networks. A pruned network consists of important parts only and therefore we can find input-output rules and make statements about individual parts of the network. To identify which synapses are unimportant a new measure is introduced. The methods are presented on six examples, where we show the ability of our pruning algorithm 1) to find a minimal network structure; 2) to select features; 3) to detect patterns among samples; 4) to partially demystify a complicated network; 5) to rapidly reduce the learning and prediction time. The network pruning algorithm is general and applicable for any classification problem.
Abstrakt v dalším jazyce: Neural networks can be trained to work well for particular tasks, but hardly ever we know why they work so well. Due to the complicated architectures and an enormous number of parameters we usually have well-working black-boxes and it is hard if not impossible to make targeted changes in a trained model. In this thesis, we focus on network optimization, specifically we make networks small and simple by removing unimportant synapses, while keeping the classification accuracy of the original fully-connected networks. Based on our experience, at least 90% of the synapses are usually redundant in fully-connected networks. A pruned network consists of important parts only and therefore we can find input-output rules and make statements about individual parts of the network. To identify which synapses are unimportant a new measure is introduced. The methods are presented on six examples, where we show the ability of our pruning algorithm 1) to find a minimal network structure; 2) to select features; 3) to detect patterns among samples; 4) to partially demystify a complicated network; 5) to rapidly reduce the learning and prediction time. The network pruning algorithm is general and applicable for any classification problem.
Práva: Plný text práce je přístupný bez omezení.
Vyskytuje se v kolekcích:Diplomové práce / Theses (KKY)

Soubory připojené k záznamu:
Soubor Popis VelikostFormát 
mb_thesis_2017.pdfPlný text práce3,04 MBAdobe PDFZobrazit/otevřít
bulin-v.pdfPosudek vedoucího práce272,79 kBAdobe PDFZobrazit/otevřít
bulin-o.pdfPosudek oponenta práce308,42 kBAdobe PDFZobrazit/otevřít
bulin-p.pdfPrůběh obhajoby práce214,44 kBAdobe PDFZobrazit/otevřít


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