Topics and frames are at the heart of various theories in communication science and other social sciences, making their measurement of key interest to many scholars. The current study compares and contrasts two main deductive computational approaches to measure policy topics and frames: Dictionary (lexicon) based identification, and supervised machine learning. Additionally, we introduce domain-specific word embeddings to these classification tasks. Drawing on a manually coded dataset of Dutch news articles and parliamentary questions, our results indicate that supervised machine learning outperforms dictionary-based classification for both tasks. Furthermore, results show that word embeddings may boost performance at relatively low cost by...
Recently, a probabilistic topic modelling approach, latent dirichlet allocation (LDA), has been exte...
In this paper, we propose a novel topic model based on incorporating dictionary definitions. Traditio...
Supervised machine learning (SML) provides us with tools to efficiently scrutinize large corpora of ...
We used machine learning to study policy issues and frames in political messages. With regard to fra...
The goal of topic detection or topic modelling is to uncover the hidden topics in a large corpus. It...
Content analysis of political communication usually covers large amounts of material and makes the s...
Content analysis of political communication usually covers large amounts of material and makes the s...
We introduce and assess the use of supervised learning in cross-domain topic classification. In this...
Automated detection of frames in political discourses has gained increasing attention in natural lan...
Dictionary-based approaches to computational text analysis have been shown to perform relatively poo...
Topic modeling is an unsupervised learning task that discovers the hidden topics in a ...
In this paper, we propose a novel topic model based on incorporating dictionary definitions. Traditi...
Topic models are widely used in natural language processing, allowing researchers to estimate the un...
We explore the application of supervised machine learning (SML) to frame coding. By automating the c...
We propose a statistical frame-based approach (FBA) for natural language processing, and demonstrate...
Recently, a probabilistic topic modelling approach, latent dirichlet allocation (LDA), has been exte...
In this paper, we propose a novel topic model based on incorporating dictionary definitions. Traditio...
Supervised machine learning (SML) provides us with tools to efficiently scrutinize large corpora of ...
We used machine learning to study policy issues and frames in political messages. With regard to fra...
The goal of topic detection or topic modelling is to uncover the hidden topics in a large corpus. It...
Content analysis of political communication usually covers large amounts of material and makes the s...
Content analysis of political communication usually covers large amounts of material and makes the s...
We introduce and assess the use of supervised learning in cross-domain topic classification. In this...
Automated detection of frames in political discourses has gained increasing attention in natural lan...
Dictionary-based approaches to computational text analysis have been shown to perform relatively poo...
Topic modeling is an unsupervised learning task that discovers the hidden topics in a ...
In this paper, we propose a novel topic model based on incorporating dictionary definitions. Traditi...
Topic models are widely used in natural language processing, allowing researchers to estimate the un...
We explore the application of supervised machine learning (SML) to frame coding. By automating the c...
We propose a statistical frame-based approach (FBA) for natural language processing, and demonstrate...
Recently, a probabilistic topic modelling approach, latent dirichlet allocation (LDA), has been exte...
In this paper, we propose a novel topic model based on incorporating dictionary definitions. Traditio...
Supervised machine learning (SML) provides us with tools to efficiently scrutinize large corpora of ...