Unsupervised topic discovery applied to segmentation of news transcriptions
نویسندگان
چکیده
Audio transcriptions from Automatic Speech Recognition systems are a continuous stream of words that are difficult to read. Segmenting these transcriptions into thematically distinct stories and categorizing the stories by topics increases readability and comprehensibility. However, manually defined topic categories are rarely available, and the cost of annotating a large corpus with thousands of distinct topics is high. We describe a procedure for applying the Unsupervised Topic Discovery (UTD) algorithm to the Thematic Story Segmentation procedure for segmenting broadcast news episodes into stories and to assign these stories with automatic topic labels. We report our results of applying automatic topics for the task of story segmentation on a collection of news episodes in English and Arabic. Our results indicate that story segmentation performance with automatic topic annotations from UTD is at par with the performance with manual topic annotations. Fig In s problem describe segmen In Secti the sto annotati Arabic.
منابع مشابه
Online Story Segmentation of Multilingual Streaming Broadcast News
We present an online story segmentation approach for Broadcast News (BN) that is built upon and integrated into BBN COTS multilingual Broadcast Monitoring System (BMS). We take a discriminative model-based approach, using Support Vector Machines to segment BN transcriptions into thematically coherent stories within the real-time constraints defined by BMS. We extract lexical, topical and story ...
متن کاملA New Document Embedding Method for News Classification
Abstract- Text classification is one of the main tasks of natural language processing (NLP). In this task, documents are classified into pre-defined categories. There is lots of news spreading on the web. A text classifier can categorize news automatically and this facilitates and accelerates access to the news. The first step in text classification is to represent documents in a suitable way t...
متن کاملUnsupervised Texture Image Segmentation Using MRFEM Framework
Texture image analysis is one of the most important working realms of image processing in medical sciences and industry. Up to present, different approaches have been proposed for segmentation of texture images. In this paper, we offered unsupervised texture image segmentation based on Markov Random Field (MRF) model. First, we used Gabor filter with different parameters’ (frequency, orientatio...
متن کاملTraffic Scene Analysis using Hierarchical Sparse Topical Coding
Analyzing motion patterns in traffic videos can be exploited directly to generate high-level descriptions of the video contents. Such descriptions may further be employed in different traffic applications such as traffic phase detection and abnormal event detection. One of the most recent and successful unsupervised methods for complex traffic scene analysis is based on topic models. In this pa...
متن کاملUnsupervised Texture Image Segmentation Using MRFEM Framework
Texture image analysis is one of the most important working realms of image processing in medical sciences and industry. Up to present, different approaches have been proposed for segmentation of texture images. In this paper, we offered unsupervised texture image segmentation based on Markov Random Field (MRF) model. First, we used Gabor filter with different parameters’ (frequency, orientatio...
متن کامل