magistrsko delo
Gašper Petelin (Author), Igor Kononenko (Mentor)

Abstract

V zadnjih letih so na področju strojnega učenja umetne nevronske mreže dosegle precejšen preboj in trenutno na nekaterih domenah dosegajo precej bolše rezultate kot klasične metode strojnega učenja. S popularizacijo nevronskih mrež pa je začela rasti tudi njihova kompleksnost, kar v praksi pomeni počasnejše in manj stabilno učenje ter potreba po večji količini podatkov. V okviru magistrske naloge je predstavljen nov podatkovno voden način inicializacije uteži nevronskih mrež, ki idejo črpa iz nenadzorovanega učenja, začetne uteži ciljne nevronske mreže izračuna s pomočjo učnih podatkov. Tak način lahko v določenih primerih precej izboljša hitrost učenja in točnost napovedi. Prednost predlagane inicializacije je tudi ta, da jo je možno izvesti paralelno, kar precej pospeši celoten proces inicializacije. Predlagana inicializacija in vpliv njenih parametrov je testiran na učni množici slik in učni množici genskih podatkov.

Keywords

nevronske mreže;inicializacija uteži;podatkovno vodena inicializacija;računalništvo;računalništvo in informatika;magisteriji;

Data

Language: Slovenian
Year of publishing:
Typology: 2.09 - Master's Thesis
Organization: UL FRI - Faculty of Computer and Information Science
Publisher: [G. Petelin]
UDC: 004.8(043.2)
COBISS: 32849411 Link will open in a new window
Views: 892
Downloads: 173
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Other data

Secondary language: English
Secondary title: Data driven neural network weight initialization
Secondary abstract: In recent years the popularity of artificial neural networks has grown within the field of machine learning. Neural networks have achieved surprisingly good results in specific domains compared to other more traditional machine learning approaches. But with growth in their popularity, their complexity also grew. More complex neural networks are usually harder to train since the process is less stable and it requires more training data. A new data-driven weight initialization is proposed, that is based on unsupervised learning and is using training data to approximate optimal weights. This new approach is useful and in some cases gives a large boost to neural network learning speed and accuracy. Initialization is also scalable since it is easy to parallelize. Proposed initialization and optimal values of its parameters are tested on a dataset of images and datasets of biological gene expressions.
Secondary keywords: neural networks;weight initialization;data driven initialization;computer science;computer and information science;master's degree;
Type (COBISS): Master's thesis/paper
Study programme: 1000471
Embargo end date (OpenAIRE): 1970-01-01
Thesis comment: Univ. v Ljubljani, Fak. za računalništvo in informatiko
Pages: 97 str.
ID: 11864347