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WET: Word embedding-topic distribution vectors for MOOC video lectures dataset

Zenun Kastrati, Arianit Kurti, Ali Shariq Imran

2020Data in Brief29 citationsDOIOpen Access PDF

Abstract

In this article, we present a dataset containing word embeddings and document topic distribution vectors generated from MOOCs video lecture transcripts. Transcripts of 12,032 video lectures from 200 courses were collected from Coursera learning platform. This large corpus of transcripts was used as input to two well-known NLP techniques, namely Word2Vec and Latent Dirichlet Allocation (LDA) to generate word embeddings and topic vectors, respectively. We used Word2Vec and LDA implementation in the Gensim package in Python. The data presented in this article are related to the research article entitled "Integrating word embeddings and document topics with deep learning in a video classification framework" [1]. The dataset is hosted in the Mendeley Data repository [2].

Topics & Concepts

Word2vecLatent Dirichlet allocationPython (programming language)Computer scienceTopic modelWord (group theory)Word embeddingEmbeddingArtificial intelligenceNatural language processingInformation retrievalSentiment analysisWorld Wide WebMathematicsGeometryOperating systemOnline Learning and AnalyticsVideo Analysis and SummarizationMultimodal Machine Learning Applications