Media
I Witnessed the Future of AI, and It's a Broken Toy
This story was supposed to have a different beginning. You were supposed to hear about how, earlier this week, I attended a splashy launch party for a new AI gadget--the Rabbit R1--in New York City, and then, standing on a windy curb outside the venue, pressed a button on the device to summon an Uber home. Instead, after maybe an hour of getting it set up and fidgeting with it, the connection failed. The R1 is a bright-orange chunk of a device, with a camera, a mic, and a small screen. Press and hold its single button, ask it a question or give it a command using your voice, and the cute bouncing rabbit on screen will perk up its ears, then talk back to you.
From Languages to Geographies: Towards Evaluating Cultural Bias in Hate Speech Datasets
Tonneau, Manuel, Liu, Diyi, Fraiberger, Samuel, Schroeder, Ralph, Hale, Scott A., Röttger, Paul
Perceptions of hate can vary greatly across cultural contexts. Hate speech (HS) datasets, however, have traditionally been developed by language. This hides potential cultural biases, as one language may be spoken in different countries home to different cultures. In this work, we evaluate cultural bias in HS datasets by leveraging two interrelated cultural proxies: language and geography. We conduct a systematic survey of HS datasets in eight languages and confirm past findings on their English-language bias, but also show that this bias has been steadily decreasing in the past few years. For three geographically-widespread languages -- English, Arabic and Spanish -- we then leverage geographical metadata from tweets to approximate geo-cultural contexts by pairing language and country information. We find that HS datasets for these languages exhibit a strong geo-cultural bias, largely overrepresenting a handful of countries (e.g., US and UK for English) relative to their prominence in both the broader social media population and the general population speaking these languages. Based on these findings, we formulate recommendations for the creation of future HS datasets.
Pope to bring his call for ethical artificial intelligence to G7 summit in June in southern Italy
Fox News Flash top headlines are here. Check out what's clicking on Foxnews.com. Pope Francis is taking his call for artificial intelligence to be developed and used according to ethical lines to the Group of 7 industrialized nations. Italian Prime Minister Giorgia Meloni announced Friday that Francis had accepted her invitation to attend the G7 Summit in Puglia in June. The Vatican confirmed the news.
Hungry for more Fallout? Come with me on a YouTube lore binge
Amazon's Fallout TV series is pretty good, yeah? Not only is it some darn great television in its own right, this high-budget, high-profile show might just be the most faithful adaptation of a video game ever put to screens big or small. It's so good that the Fallout video games, the most recent of which is almost seven years old, have been shooting back up the charts. But if you're new to the crumbling, irradiated world of Fallout, you might feel a little lost when the credits roll on the last episode. What's this New Vegas place hinted at in the post-credits scene? Why did the pre-war flashbacks look like Marty McFly's 1955, but have nuclear-powered robots? How did people invent Iron Man-style power armor if they can't make a computer smaller than a bread box?
Algorithmic Fairness: A Tolerance Perspective
Luo, Renqiang, Tang, Tao, Xia, Feng, Liu, Jiaying, Xu, Chengpei, Zhang, Leo Yu, Xiang, Wei, Zhang, Chengqi
Recent advancements in machine learning and deep learning have brought algorithmic fairness into sharp focus, illuminating concerns over discriminatory decision making that negatively impacts certain individuals or groups. These concerns have manifested in legal, ethical, and societal challenges, including the erosion of trust in intelligent systems. In response, this survey delves into the existing literature on algorithmic fairness, specifically highlighting its multifaceted social consequences. We introduce a novel taxonomy based on 'tolerance', a term we define as the degree to which variations in fairness outcomes are acceptable, providing a structured approach to understanding the subtleties of fairness within algorithmic decisions. Our systematic review covers diverse industries, revealing critical insights into the balance between algorithmic decision making and social equity. By synthesizing these insights, we outline a series of emerging challenges and propose strategic directions for future research and policy making, with the goal of advancing the field towards more equitable algorithmic systems.
OntoChat: a Framework for Conversational Ontology Engineering using Language Models
Zhang, Bohui, Carriero, Valentina Anita, Schreiberhuber, Katrin, Tsaneva, Stefani, González, Lucía Sánchez, Kim, Jongmo, de Berardinis, Jacopo
Ontology engineering (OE) in large projects poses a number of challenges arising from the heterogeneous backgrounds of the various stakeholders, domain experts, and their complex interactions with ontology designers. This multi-party interaction often creates systematic ambiguities and biases from the elicitation of ontology requirements, which directly affect the design, evaluation and may jeopardise the target reuse. Meanwhile, current OE methodologies strongly rely on manual activities (e.g., interviews, discussion pages). After collecting evidence on the most crucial OE activities, we introduce \textbf{OntoChat}, a framework for conversational ontology engineering that supports requirement elicitation, analysis, and testing. By interacting with a conversational agent, users can steer the creation of user stories and the extraction of competency questions, while receiving computational support to analyse the overall requirements and test early versions of the resulting ontologies. We evaluate OntoChat by replicating the engineering of the Music Meta Ontology, and collecting preliminary metrics on the effectiveness of each component from users. We release all code at https://github.com/King-s-Knowledge-Graph-Lab/OntoChat.
CULTURE-GEN: Revealing Global Cultural Perception in Language Models through Natural Language Prompting
Li, Huihan, Jiang, Liwei, Huang, Jena D., Kim, Hyunwoo, Santy, Sebastin, Sorensen, Taylor, Lin, Bill Yuchen, Dziri, Nouha, Ren, Xiang, Choi, Yejin
As the utilization of large language models (LLMs) has proliferated worldwide, it is crucial for them to have adequate knowledge and fair representation for diverse global cultures. In this work, we uncover culture perceptions of three SOTA models on 110 countries and regions on 8 culture-related topics through culture-conditioned generations, and extract symbols from these generations that are associated to each culture by the LLM. We discover that culture-conditioned generation consist of linguistic "markers" that distinguish marginalized cultures apart from default cultures. We also discover that LLMs have an uneven degree of diversity in the culture symbols, and that cultures from different geographic regions have different presence in LLMs' culture-agnostic generation. Our findings promote further research in studying the knowledge and fairness of global culture perception in LLMs. Code and Data can be found in: https://github.com/huihanlhh/Culture-Gen/
Clustering Document Parts: Detecting and Characterizing Influence Campaigns from Documents
Wang, Zhengxiang, Rambow, Owen
We propose a novel clustering pipeline to detect and characterize influence campaigns from documents. This approach clusters parts of document, detects clusters that likely reflect an influence campaign, and then identifies documents linked to an influence campaign via their association with the high-influence clusters. Our approach outperforms both the direct document-level classification and the direct document-level clustering approach in predicting if a document is part of an influence campaign. We propose various novel techniques to enhance our pipeline, including using an existing event factuality prediction system to obtain document parts, and aggregating multiple clustering experiments to improve the performance of both cluster and document classification. Classifying documents after clustering not only accurately extracts the parts of the documents that are relevant to influence campaigns, but also captures influence campaigns as a coordinated and holistic phenomenon. Our approach makes possible more fine-grained and interpretable characterizations of influence campaigns from documents.
Multimodal Large Language Models to Support Real-World Fact-Checking
Geng, Jiahui, Kementchedjhieva, Yova, Nakov, Preslav, Gurevych, Iryna
Multimodal large language models (MLLMs) carry the potential to support humans in processing vast amounts of information. While MLLMs are already being used as a fact-checking tool, their abilities and limitations in this regard are understudied. Here is aim to bridge this gap. In particular, we propose a framework for systematically assessing the capacity of current multimodal models to facilitate real-world fact-checking. Our methodology is evidence-free, leveraging only these models' intrinsic knowledge and reasoning capabilities. By designing prompts that extract models' predictions, explanations, and confidence levels, we delve into research questions concerning model accuracy, robustness, and reasons for failure. We empirically find that (1) GPT-4V exhibits superior performance in identifying malicious and misleading multimodal claims, with the ability to explain the unreasonable aspects and underlying motives, and (2) existing open-source models exhibit strong biases and are highly sensitive to the prompt. Our study offers insights into combating false multimodal information and building secure, trustworthy multimodal models. To the best of our knowledge, we are the first to evaluate MLLMs for real-world fact-checking.
A Semi-Automatic Approach to Create Large Gender- and Age-Balanced Speaker Corpora: Usefulness of Speaker Diarization & Identification
Uro, Rémi, Doukhan, David, Rilliard, Albert, Larcher, Laëtitia, Adgharouamane, Anissa-Claire, Tahon, Marie, Laurent, Antoine
This paper presents a semi-automatic approach to create a diachronic corpus of voices balanced for speaker's age, gender, and recording period, according to 32 categories (2 genders, 4 age ranges and 4 recording periods). Corpora were selected at French National Institute of Audiovisual (INA) to obtain at least 30 speakers per category (a total of 960 speakers; only 874 have be found yet). For each speaker, speech excerpts were extracted from audiovisual documents using an automatic pipeline consisting of speech detection, background music and overlapped speech removal and speaker diarization, used to present clean speaker segments to human annotators identifying target speakers. This pipeline proved highly effective, cutting down manual processing by a factor of ten. Evaluation of the quality of the automatic processing and of the final output is provided. It shows the automatic processing compare to up-to-date process, and that the output provides high quality speech for most of the selected excerpts. This method shows promise for creating large corpora of known target speakers.