5 research outputs found

    The EU energy policy image dynamics in relation to the external crisis: evidence from 5th and 6th European Commission terms

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    The master thesis explores the EU energy policy agenda change by analyzing legislative preparatory documents prepared by the European Commission in the period between September 2009 and November 2019. This period covers the two legislative cycles of the EU that changed in 2014 and coincided with the major external event – Crimea annexation followed by the warmongering in Eastern Ukraine. Multiple Streams Framework and Punctuated Equilibrium Theory was combined as a theoretical framework, according to which the agenda change is caused by the external event. However, the nature of agenda change depends on the policy problem interpretation by the main policy entrepreneur. Therefore, the paper uses the mixed methodology that combines computational text analysis and qualitative interpretation of the results in order to structurally explore the content of the EU energy policy agenda and its change in relation to the external crisis. So, the thesis concludes that the EU energy policy image has a multifaceted character consisting of five main dimensions: economic, environmental, security, foreign affairs, and procedural ones. The paper also contributes to the understanding of the policy agenda change: the shift happens in parallel with the change of problem definition given by the policy entrepreneur – the European Commission.https://www.ester.ee/record=b5298482*es

    Symmetric Correspondence Topic Models for Multilingual Text Analysis

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    <p>Topic modeling is a widely used approach to analyzing large text collections. A small number of multilingual topic models have recently been explored to discover latent topics among parallel or comparable documents, such as in Wikipedia. Other topic models that were originally proposed for structured data are also applicable to multilingual documents. Correspondence Latent Dirichlet Allocation (CorrLDA) is one such model; however, it requires a pivot language to be speci- fied in advance. We propose a new topic model, Symmetric Correspondence LDA (SymCorrLDA), that incorporates a hidden variable to control a pivot language, in an extension of CorrLDA. We experimented with two multilingual comparable datasets extracted from Wikipedia and demonstrate that SymCorrLDA is more effective than some other existing multilingual topic models.</p

    Symmetric Correspondence Topic Models for Multilingual Text Analysis

    No full text
    Topic modeling is a widely used approach to analyzing large text collections. A small number of multilingual topic models have recently been explored to discover latent topics among parallel or comparable documents, such as in Wikipedia. Other topic models that were originally proposed for structured data are also applicable to multilingual documents. Correspondence Latent Dirichlet Allocation (CorrLDA) is one such model; however, it requires a pivot language to be specified in advance. We propose a new topic model, Symmetric Correspondence LDA (SymCorrLDA), that incorporates a hidden variable to control a pivot language, in an extension of CorrLDA. We experimented with two multilingual comparable datasets extracted from Wikipedia and demonstrate that SymCorrLDA is more effective than some other existing multilingual topic models.

    Multi-view Representation Learning for Unifying Languages, Knowledge and Vision

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    The growth of content on the web has raised various challenges, yet also provided numerous opportunities. Content exists in varied forms such as text appearing in different languages, entity-relationship graph represented as structured knowledge and as a visual embodiment like images/videos. They are often referred to as modalities. In many instances, the different amalgamation of modalities co-exists to complement each other or to provide consensus. Thus making the content either heterogeneous or homogeneous. Having an additional point of view for each instance in the content is beneficial for data-driven learning and intelligent content processing. However, despite having availability of such content. Most advancements made in data-driven learning (i.e., machine learning) is by solving tasks separately for the single modality. The similar endeavor was not shown for the challenges which required input either from all or subset of them. In this dissertation, we develop models and techniques that can leverage multiple views of heterogeneous or homogeneous content and build a shared representation for aiding several applications which require a combination of modalities mentioned above. In particular, we aim to address applications such as content-based search, categorization, and generation by providing several novel contributions. First, we develop models for heterogeneous content by jointly modeling diverse representations emerging from two views depicting text and image by learning their correlation. To be specific, modeling such correlation is helpful to retrieve cross-modal content. Second, we replace the heterogeneous content with homogeneous to learn a common space representation for content categorization across languages. Furthermore, we develop models that take input from both homogeneous and heterogeneous content to facilitate the construction of common space representation from more than two views. Specifically, representation is used to generate one view from another. Lastly, we describe a model that can handle missing views, and demonstrate that the model can generate missing views by utilizing external knowledge. We argue that techniques the models leverage internally provide many practical benefits and lot of immediate value applications. From the modeling perspective, our contributed model design in this thesis can be summarized under the phrase Multi-view Representation Learning( MVRL ). These models are variations and extensions of shallow statistical and deep neural networks approaches that can jointly optimize and exploit all views of the input content arising from different independent representations. We show that our models advance state of the art, but not limited to tasks such as cross-modal retrieval, cross-language text classification, image-caption generation in multiple languages and caption generation for images containing unseen visual object categories
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