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Can 'we the people' keep AI in check? • TechCrunch
Technologist and researcher Aviv Ovadya isn't sure that generative AI can be governed, but he thinks the most plausible means of keeping it in check might just be entrusting those who will be impacted by AI to collectively decide on the ways to curb it. That means you; it means me. It's the power of large networks of individuals to problem solve faster and more equitably than a small group of individuals might do alone (including, say, in Washington). In Taiwan, for example, civic-minded hackers in 2015 formed a platform -- "virtual Taiwan" -- that "brings together representatives from the public, private and social sectors to debate policy solutions to problems primarily related to the digital economy," as explained in 2019 by Taiwan's digital minister, Audrey Tang in the New York Times. Since then, vTaiwan, as it's known, has tackled dozens of issues by "relying on a mix of online debate and face-to-face discussions with stakeholders," Tang wrote at the time.
Descartes: Generating Short Descriptions of Wikipedia Articles
Sakota, Marija, Peyrard, Maxime, West, Robert
Wikipedia is one of the richest knowledge sources on the Web today. In order to facilitate navigating, searching, and maintaining its content, Wikipedia's guidelines state that all articles should be annotated with a so-called short description indicating the article's topic (e.g., the short description of beer is "Alcoholic drink made from fermented cereal grains"). Nonetheless, a large fraction of articles (ranging from 10.2% in Dutch to 99.7% in Kazakh) have no short description yet, with detrimental effects for millions of Wikipedia users. Motivated by this problem, we introduce the novel task of automatically generating short descriptions for Wikipedia articles and propose Descartes, a multilingual model for tackling it. Descartes integrates three sources of information to generate an article description in a target language: the text of the article in all its language versions, the already-existing descriptions (if any) of the article in other languages, and semantic type information obtained from a knowledge graph. We evaluate a Descartes model trained for handling 25 languages simultaneously, showing that it beats baselines (including a strong translation-based baseline) and performs on par with monolingual models tailored for specific languages. A human evaluation on three languages further shows that the quality of Descartes's descriptions is largely indistinguishable from that of human-written descriptions; e.g., 91.3% of our English descriptions (vs. 92.1% of human-written descriptions) pass the bar for inclusion in Wikipedia, suggesting that Descartes is ready for production, with the potential to support human editors in filling a major gap in today's Wikipedia across languages.
Lip-to-Speech Synthesis in the Wild with Multi-task Learning
Kim, Minsu, Hong, Joanna, Ro, Yong Man
Recent studies have shown impressive performance in Lip-to-speech synthesis that aims to reconstruct speech from visual information alone. However, they have been suffering from synthesizing accurate speech in the wild, due to insufficient supervision for guiding the model to infer the correct content. Distinct from the previous methods, in this paper, we develop a powerful Lip2Speech method that can reconstruct speech with correct contents from the input lip movements, even in a wild environment. To this end, we design multi-task learning that guides the model using multimodal supervision, i.e., text and audio, to complement the insufficient word representations of acoustic feature reconstruction loss. Thus, the proposed framework brings the advantage of synthesizing speech containing the right content of multiple speakers with unconstrained sentences. We verify the effectiveness of the proposed method using LRS2, LRS3, and LRW datasets.
Enabling Conversational Interaction with Mobile UI using Large Language Models
Wang, Bryan, Li, Gang, Li, Yang
Conversational agents show the promise to allow users to interact with mobile devices using language. However, to perform diverse UI tasks with natural language, developers typically need to create separate datasets and models for each specific task, which is expensive and effort-consuming. Recently, pre-trained large language models (LLMs) have been shown capable of generalizing to various downstream tasks when prompted with a handful of examples from the target task. This paper investigates the feasibility of enabling versatile conversational interactions with mobile UIs using a single LLM. We designed prompting techniques to adapt an LLM to mobile UIs. We experimented with four important modeling tasks that address various scenarios in conversational interaction. Our method achieved competitive performance on these challenging tasks without requiring dedicated datasets and training, offering a lightweight and generalizable approach to enable language-based mobile interaction.
Multimodal Propaganda Processing
Propaganda campaigns have long been used to influence public opinion via disseminating biased and/or misleading information. Despite the increasing prevalence of propaganda content on the Internet, few attempts have been made by AI researchers to analyze such content. We introduce the task of multimodal propaganda processing, where the goal is to automatically analyze propaganda content. We believe that this task presents a long-term challenge to AI researchers and that successful processing of propaganda could bring machine understanding one important step closer to human understanding. We discuss the technical challenges associated with this task and outline the steps that need to be taken to address it.
MNL-Bandit with Knapsacks
Aznag, Abdellah, Goyal, Vineet, Perivier, Noemie
We consider a dynamic assortment selection problem where a seller has a fixed inventory of $N$ substitutable products and faces an unknown demand that arrives sequentially over $T$ periods. In each period, the seller needs to decide on the assortment of products (of cardinality at most $K$) to offer to the customers. The customer's response follows an unknown multinomial logit model (MNL) with parameters $v$. The goal of the seller is to maximize the total expected revenue given the fixed initial inventory of $N$ products. We give a policy that achieves a regret of $\tilde O\Big(K \sqrt{KN T}\Big(\sqrt{v_{\text{max}}} + \frac{1}{q_{\text{min}}}\text{OPT}\Big)\Big)$, where $v_{\text{max}}\leq 1$ is the maximum utility for any product and $q_{\text{min}}$ the minimum inventory level, under a mild assumption on the model parameters. In particular, our policy achieves a near-optimal $\tilde O(\sqrt{T})$ regret in a large-inventory setting. Our policy builds upon the UCB-based approach for MNL-bandit without inventory constraints in [1] and addresses the inventory constraints through an exponentially sized LP for which we present a tractable approximation while keeping the $\tilde O(\sqrt{T})$ regret bound.
A Comprehensive Survey on Automated Machine Learning for Recommendations
Chen, Bo, Zhao, Xiangyu, Wang, Yejing, Fan, Wenqi, Guo, Huifeng, Tang, Ruiming
Deep recommender systems (DRS) are critical for current commercial online service providers, which address the issue of information overload by recommending items that are tailored to the user's interests and preferences. They have unprecedented feature representations effectiveness and the capacity of modeling the non-linear relationships between users and items. Despite their advancements, DRS models, like other deep learning models, employ sophisticated neural network architectures and other vital components that are typically designed and tuned by human experts. This article will give a comprehensive summary of automated machine learning (AutoML) for developing DRS models. We first provide an overview of AutoML for DRS models and the related techniques. Then we discuss the state-of-the-art AutoML approaches that automate the feature selection, feature embeddings, feature interactions, and model training in DRS. We point out that the existing AutoML-based recommender systems are developing to a multi-component joint search with abstract search space and efficient search algorithm. Finally, we discuss appealing research directions and summarize the survey.
Cross Modal Distillation for Flood Extent Mapping
Garg, Shubhika, Feinstein, Ben, Timnat, Shahar, Batchu, Vishal, Dror, Gideon, Rosenthal, Adi Gerzi, Gulshan, Varun
The increasing intensity and frequency of floods is one of the many consequences of our changing climate. In this work, we explore ML techniques that improve the flood detection module of an operational early flood warning system. Our method exploits an unlabelled dataset of paired multi-spectral and Synthetic Aperture Radar (SAR) imagery to reduce the labeling requirements of a purely supervised learning method. Prior works have used unlabelled data by creating weak labels out of them. However, from our experiments we noticed that such a model still ends up learning the label mistakes in those weak labels. Motivated by knowledge distillation and semi supervised learning, we explore the use of a teacher to train a student with the help of a small hand labelled dataset and a large unlabelled dataset. Unlike the conventional self distillation setup, we propose a cross modal distillation framework that transfers supervision from a teacher trained on richer modality (multi-spectral images) to a student model trained on SAR imagery. The trained models are then tested on the Sen1Floods11 dataset. Our model outperforms the Sen1Floods11 baseline model trained on the weak labeled SAR imagery by an absolute margin of 6.53% Intersection-over-Union (IoU) on the test split.
Foundation Models for Natural Language Processing -- Pre-trained Language Models Integrating Media
Paaß, Gerhard, Giesselbach, Sven
This open access book provides a comprehensive overview of the state of the art in research and applications of Foundation Models and is intended for readers familiar with basic Natural Language Processing (NLP) concepts. Over the recent years, a revolutionary new paradigm has been developed for training models for NLP. These models are first pre-trained on large collections of text documents to acquire general syntactic knowledge and semantic information. Then, they are fine-tuned for specific tasks, which they can often solve with superhuman accuracy. When the models are large enough, they can be instructed by prompts to solve new tasks without any fine-tuning. Moreover, they can be applied to a wide range of different media and problem domains, ranging from image and video processing to robot control learning. Because they provide a blueprint for solving many tasks in artificial intelligence, they have been called Foundation Models. After a brief introduction to basic NLP models the main pre-trained language models BERT, GPT and sequence-to-sequence transformer are described, as well as the concepts of self-attention and context-sensitive embedding. Then, different approaches to improving these models are discussed, such as expanding the pre-training criteria, increasing the length of input texts, or including extra knowledge. An overview of the best-performing models for about twenty application areas is then presented, e.g., question answering, translation, story generation, dialog systems, generating images from text, etc. For each application area, the strengths and weaknesses of current models are discussed, and an outlook on further developments is given. In addition, links are provided to freely available program code. A concluding chapter summarizes the economic opportunities, mitigation of risks, and potential developments of AI.
Stabilising and accelerating light gated recurrent units for automatic speech recognition
Moumen, Adel, Parcollet, Titouan
Hence, the choice of the recurrent unit is of crucial interest to achieve state-of-the-art word error rates. For instance, the The light gated recurrent units (Li-GRU) is well-known for achieving light gated recurrent units (Li-GRU) [8] network has been designed impressive results in automatic speech recognition (ASR) tasks to carefully address the task of ASR. A Li-GRU is a compact singlegate while being lighter and faster to train than a standard gated recurrent unit derived from the gated recurrent units (GRU) which reduce units (GRU). However, the unbounded nature of its rectified linear by30% the per-epoch training time over a standard GRU while also unit on the candidate recurrent gate induces an important gradient improving the ASR accuracy. Nevertheless, and despite a clear interest exploding phenomenon disrupting the training process and preventing from the community, two major issues prevent a stronger adoption it from being applied to famous datasets. In this paper, we theoretically of the Li-GRU: (1) it highly suffers from exploding gradients and empirically derive the necessary conditions for its stability as the gate is unbounded; and (2) no optimized implementation exists, as well as engineering mechanisms to speed up by a factor of hence leading to much larger training times than more complex five its training time, hence introducing a novel version of this architecture alternatives such as LSTM neural networks.