The relation of news texts and images is an interesting research topic.
Since for a significant fraction of news events no photos are available, news
editors often use archived photos or stock images. Due to the advances of
generative AI methods, images may be generated to get well-fitting images
catching the attention of potential readers.
NewsImages is an Evaluation Labs to discuss, test, and evaluate methods for
re-matching news texts and images. NewsImages 2023 runs under the umbrella of
MediaEval 2023. NewsImages lab provides a dataset tailored for learning and
evaluating strategies for reassigning news texts and images. The dataset consists
of ~40k images and news items split in ~34k for training and ~6k for testing.
The NewsImages 2023 workshop will be held in Amsterdam, in February 2024 in conjunction with MMM2024 .
The dataset is available for download. Check out the details on the official web page and join NewsImages 2023!
The Long Night of Science (LNDW) is an annual event that takes place in Berlin and Potsdam. It is a science festival that offers visitors the opportunity to explore science and research in a fun and interactive way. In 2023, for the first time the Center for Tangible AI and Digitalization (ZEKI) participated in the Long Night of Science.
Our research group presented Bobbi, the Chatbot of the Berlin’s administration (developed in a cooperation between the TU Berlin and the ITDZ Berlin). Usually, Chatbot Bobbi reliably answers questions related to the Berlin’s administration on the Berlin’s official Service Portal. At the LNDW visitors could personally get in touch with our robot and talk face to face with Bobbi. As a special surprise, Bobbi had prepared a small quiz allowing the visitors to test their knowledge about Bobbi’s job and the services offered by the Berlin’s administration.
The presentation had been actively attended by a large number of visitors. We discussed with the expectations and requirements to conversations with robots as well as the technical foundations of chatbots. This included classical Natural Language Processing (NLP) methods as well as Transformers and Large Language Models. Visitors learned about recent trends in NLP and enjoyed the interaction with our Chatbot Bobbi.
The strong interest in the project and the profound discussion with the visitors made the event a big success. We plan to present an improved, much more skilled version of chatbot Bobbi in 2024.
This year, NewsImages provided three news datasets from three different domains: (1) The RSS part provided news from different news portals (aggregated by the dgelt-Project). The second part TW provided news stories-related tweets. The third part RT provided news in German related to the war in Ukraine. The task in NewsImages consists in re-matching news text and images. Details about the analyzed setting, the dataset, and the evaluation metrics are explained in the Lab overview paper.
In this year’s challenge, 5 teams from Europe and Asia participated. The developed solutions provided very good results, The best team reached a Recall@5 =0.6 . The discussion of the results gave interesting insights in the relation between the news texts and the used images. The best results were obtained by annotating images using CLIP. For correlating text and image considering only a short text (e.g. the headline) has been most successful. This underlines that image and headline are often based on the same key element of the news message. The best results have been reported for tweets indicating that there is a strong overlap between the (relatively) short text and the accompanying image. The typically required translation step for the texts from the RT dataset reduced the reached recall by about 15%. The teams in the challenge mainly focused on optimizing the similarity models for connecting texts and images as well as on methods for bridging the semantic gap between news texts and images by enriching detected concepts with semantic information.
The LWDA conference (acronym for ”Lernen, Wissen, Daten, Analysen” [”Learning, Knowledge, Data, Analytics”] is a conference organized by the German Computer Science Society. The conference covers recent research in areas such as databases, information systems, knowledge discovery, machine learning, data mining, and knowledge management.
The presentations and poster sessions give a valuable overview on current research projects and results of the mostly German universities. The conference give a good platform for discussing future cooperation and for planning joined activities.
I presented on the conference a system for generating clarification questions in a chatbot tailored for the needs of the Berlin’s administration. The system combines language models, semantic annotations and clustering techniques for generating counter questions for ambiguous user inputs. This enables a virtual chatbot to guide users efficiently to the desired information. The details an be found in our paper.
The following photos give an impression from the conference.
LWDA2022 – CampusMarienburg, University of Hildesheim
The 10th edition of the International Workshop on News Recommendation and Analytics (INRA 2022) has been held at July 15th, 2022, as a hybrid SIGIR workshop in Madrid, Spain.
The INRA workshop provides a platform for recent research and discussions in the domain of news and recommender algorithms.
Over last years the relevance of news has increased what resulted in a big interest in the analysis in the production, personalization, presentation, and consumption of news.
Due to popular internet portals and social media, news are ubiquitous.
The personalization and context-aware adaptation also resulted in new challenges such as extended user profiling, filter bubbles and echo chambers as well as fake news.
These challenges are reflected in this year’s workshop program consisting of research presentations, invited talks and a panel discussion.
The talks covered a broad spectrum of news related challenges. I would highlight here three presenations:
1. Lucas Möller presented his work researching different scoring functions for evaluating neural content-based filtering. The paper shows that the optimized non-linear combinations of user-based and item-based criteria improves the recommender performance.
2. An invited presentation explained the relevance of images for the perception of news articles. The talk gave an overview on the results of MediaEval NewsImages 2021 and presented the special challenges in the NewsImages task 2022.
3. Srivas Prasad presented the challenges of news article publishing and filtering from the industry perspective. He discussed the problem of detecting relevant information in social media and delivering reliable, valuable information in real time.
The MediaEval NewsImages challenges has received growing interest in the last years. This is the movivation for us to continue the NewsImages challenge also in 2022. NewsImages provides a dataset and forum for researching the relation between texts and images in news. Images in news should attract the users attention, guide the perception of users, and highlight specific aspects of news texts. The specific challenge for news publishers is, that there are often no photos available for breaking news. So, images used in news article may come from a large spectrum of sources, including social media, screenshots from TV, stock photos, recent photos of a relevant person or a location.
NewsImages 2022 runs as a lab under the umbrella of MediaEval 2022. NewsImages provides a dataset tailored for learning and evaluating strategies for reassigning news texts and images. In 2022, the dataset consists of 3 parts: (1) News crawled from an RSS feed focusing on politic, (2) News crawled from Twitter, and (3) a News dataset crawled from a news portal in German.
The NewsImages 2022 workshop will be held in Bergen, Norway in January 2023.
More details about the MediaEval benchmark can be found on the official web page. A detailed description of the methods developed in 2021 can be found the conference proceedings from 2021.
The Hoffest (Courtyart Festival) at the Red Townhall in Berlin is traditional festival before the summer vacation. This year, Franziska Giffey, the Governing Mayor of Berlin, welcomed representatives from politics, business, science, diplomacy, culture, media and sports as well as citizens earned merits in the last months.
The DAI-Labor presented the robot Bobbi at the stand of the ITDZ Berlin. Bobbi is a cooperation project with the ITDZ Berlin. In this project we develop and evaluate a chatbot optimized for answering questions related to the services offered by the public administration.
For the Hof-Fest, Bobbi had been trained in the security domain. Based on the new knowledge, Bobbi invited visitors of the Hof-Fest to play a quiz.
The quiz and the presentation of our robot Bobbi has been a great success. Visitors liked to talk with Bobbi and to learn interesting facts from the security domain. The following photos give a visual impression from the event.
Arriving at the Red Townhall
Franziska Giffey playing quiz with our robot Bobbi
Franziska Giffey playing quiz with our robot Bobbi
In our continuously changing world, news play a major role. In recent years we observed a rapidly changing news ecosystem leading to new challenges: Workshop on News Recommendation and Analytics (INRA) serves to exchange ideas and discuss recent trends, technological advancements, and open problems concerning news. The workshop provides a forum to discuss recent research, technical and interdisciplinary aspects as well as current trends related to news. Topics of interest include information access systems for news, advances in natural language processing, multi-modality, mis- and disinformation, trust and user experiences, and personalization
We welcome contributions in scientific articles, demonstrations, and ideas. We strive to bring together researchers, practitioners, and decision-makers to address crucial challenges. The 10th edition of the INRA workshop will be held co-located with SIGIR in Madrid, Spain in July 2022.
More details can be found on the INRA webpage:
At our lab we actively work on research projects in the domain of
Language-models and Chatbots
Semantic knowledge processing and knowledge graphs
Recommender Systems
In this post, we lists datasets we have been using in DAI-Lab’s publications. All datasets are publicly available by sending an email to corpora(at)dai-labor.de or to the author of this post.
Delicious dataset
This dataset contains all public bookmarks of about 950,000 users retrieved from http://delicious.com between December 2007 and April 2008. The retrieval process resulted in about 132 million bookmarks or 420 million tag assignments that were posted between September 2003 and December 2007. No spam filtering was done! Usernames have been anonymized to protect data privacy. The final dataset is around 7GB in size (compressed).
The full corpus is described and analyzed in:
Analyzing social bookmarking systems: A del.icio.us cookbook. Robert Wetzker, Carsten Zimmermann, and Christian Bauckhage. In Mining Social Data (MSoDa) Workshop Proceedings, pp. 26-30. ECAI 2008, (July 2008).
The Slashdot Zoo
This dataset represents the social network of the technology news web site http://slashdot.org. The network contains 78,000 users and 510,000 relationships of the types friend and foe. The dataset was extracted from Slashdot between May 2008 and February 2009 and contains only the giant connected component that includes the user CmdrTaco (Rob Malda, moderator and founder of Slashdot). The relationship type friend and foe correspond to positive and negative endorsements.
An analysis of the dataset was presented at WWW 2009:
The Slashdot Zoo: Mining a Social Network with Negative Edges. Jerome Kunegis, Andreas Lommatzsch, and Christian Bauckhage. In Proceedings of the International Conference on World Wide Web, pp. 741–750, 2009.
Corpus for Internet News Sentiment Analysis
Details of the dataset and the annotation scheme and process are described in the technical report:
Bütow, F., Lommatzsch, A., Ploch, D.: Creation of a German Corpus for Internet News Sentiment Analysis. Project report, Berlin Institute of Technology, AOT (2016) [details]
GerOM: Dataset with sentiment-annotated quotations in German
The dataset consists of sentiment-annotated quotations. It can be used exclusively for academic, non-commercial research.
Details of the dataset and the annotation scheme are described in:
Ploch, D., 2015. Intelligent News Aggregator for German with Sentiment Analysis, in: Hopfgartner, F. (Ed.), Smart Information Systems, Advances in Computer Vision and Pattern Recognition. Springer International Publishing, pp. 5-46.
Twitter Sentiment Dataset
The dataset contains tweets that have been human-annotated with sentiment labels by 3 Mechanical Turk workers.
There are 12597 tweets in 4 languages: English, German, French and Portugese.
The labels annotated are positive, neutral, negative and n/a.
Learning about user interests and opinions of readers of news portals is interesting for both readers and authors. Online surveys and polls have been shown useful to engage readers and to learn about the readers options. The challenge in defining good questions (interesting for most users) is the broad spectrum of topic (requiring matching questions) and finding an adequate question formulation.
Researching what questions attract most users and how readers of online news portals interact with online polls is the objective in a joined project "What-The-Question" between the DAI-Lab at the TU Berlin and Opinary. A special focus lies on applying language models for understanding the context and linguistic aspects of the questions. In addition, methods for the automatic creation of context-aware questions are researched.
The project is supported by the German Federal Ministry for Economic Affairs and Climate Action within the funding program "Central Innovation Programme for small and medium-sized enterprises (SMEs)".