Personal Assistant Systems
What You Need to Know About the New WhatsApp Features
WhatsApp, the popular global messaging platform owned by Meta, has rolled out new features including a different way to log in and an artificial intelligence assistant in the app. Whatsapp said on X, formerly Twitter, on April 24 that this feature was "a more secure way to login." It also avoids any potential challenges in receiving an SMS to log in, with the company adding: "traveling? The messaging app already launched passkeys for Android users in October, as demonstrated by a post shared on Threads, another Meta social media platform. People with Pixel 8 and 8 Pro Google phones can now also use Face Unlock, instead of their fingerprint or PIN, to unlock and view messages on WhatsApp, as reported by 9to5Google.
'Finally, a dating app feature I can get behind!' Singletons love Hinge's huge update which lets them automatically filter out time-wasters and creeps
With thousands of potential matches, opening up any dating app can feel like wading through a sea of spam and unwanted texts. But now, Hinge has made it easier than ever to avoid time wasters and toxicity by letting users filter out unwanted terms. The new Hidden Words tool automatically blocks'Likes with Comments' containing words, phrases or even emojis, as chosen by the users. And from'Sunday Roast' to'F1', Hinge users have taken to social media to share the phrases and dating clichés that they're sick of hearing about. One X, formerly Twitter user, wrote: 'Finally, a dating app feature I can get behind.'
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.
Structured Conformal Inference for Matrix Completion with Applications to Group Recommender Systems
Liang, Ziyi, Xie, Tianmin, Tong, Xin, Sesia, Matteo
We develop a conformal inference method to construct joint confidence regions for structured groups of missing entries within a sparsely observed matrix. This method is useful to provide reliable uncertainty estimation for group-level collaborative filtering; for example, it can be applied to help suggest a movie for a group of friends to watch together. Unlike standard conformal techniques, which make inferences for one individual at a time, our method achieves stronger group-level guarantees by carefully assembling a structured calibration data set mimicking the patterns expected among the test group of interest. We propose a generalized weighted conformalization framework to deal with the lack of exchangeability arising from such structured calibration, and in this process we introduce several innovations to overcome computational challenges. The practicality and effectiveness of our method are demonstrated through extensive numerical experiments and an analysis of the MovieLens 100K data set.
The Morning After: Testing the Rabbit R1's AI assistant skills
Back in January, startup Rabbit revealed its first device at CES 2024. The R1 is an adorable, vibrant orange AI machine with a camera, scroll wheel, and ambitious demos. Now, the device is being sent out to early adopters (and tech reviewers), and we've got some proper hands-on experience to tide you over until we've wrapped up a full review. It's definitely cute, designed by Teenage Engineering, which has put its design talents to use on the Playdate as well as Nothing's most recent phones as well as music gadgets. Like all those things, it combines a retro-futuristic aesthetic with solid build quality, shiny surfaces, glass and metal accents.
RE-RecSys: An End-to-End system for recommending properties in Real-Estate domain
C, Venkatesh, Oberoi, Harshit, Goyal, Anil, Sikka, Nikhil
We propose an end-to-end real-estate recommendation system, RE-RecSys, which has been productionized in real-world industry setting. We categorize any user into 4 categories based on available historical data: i) cold-start users; ii) short-term users; iii) long-term users; and iv) short-long term users. For cold-start users, we propose a novel rule-based engine that is based on the popularity of locality and user preferences. For short-term users, we propose to use content-filtering model which recommends properties based on recent interactions of users. For long-term and short-long term users, we propose a novel combination of content and collaborative filtering based approach which can be easily productionized in the real-world scenario. Moreover, based on the conversion rate, we have designed a novel weighing scheme for different impressions done by users on the platform for the training of content and collaborative models. Finally, we show the efficiency of the proposed pipeline, RE-RecSys, on a real-world property and clickstream dataset collected from leading real-estate platform in India. We show that the proposed pipeline is deployable in real-world scenario with an average latency of <40 ms serving 1000 rpm.
Mixed Supervised Graph Contrastive Learning for Recommendation
Zhang, Weizhi, Yang, Liangwei, Song, Zihe, Zou, Henry Peng, Xu, Ke, Zhu, Yuanjie, Yu, Philip S.
Recommender systems (RecSys) play a vital role in online platforms, offering users personalized suggestions amidst vast information. Graph contrastive learning aims to learn from high-order collaborative filtering signals with unsupervised augmentation on the user-item bipartite graph, which predominantly relies on the multi-task learning framework involving both the pair-wise recommendation loss and the contrastive loss. This decoupled design can cause inconsistent optimization direction from different losses, which leads to longer convergence time and even sub-optimal performance. Besides, the self-supervised contrastive loss falls short in alleviating the data sparsity issue in RecSys as it learns to differentiate users/items from different views without providing extra supervised collaborative filtering signals during augmentations. In this paper, we propose Mixed Supervised Graph Contrastive Learning for Recommendation (MixSGCL) to address these concerns. MixSGCL originally integrates the training of recommendation and unsupervised contrastive losses into a supervised contrastive learning loss to align the two tasks within one optimization direction. To cope with the data sparsity issue, instead unsupervised augmentation, we further propose node-wise and edge-wise mixup to mine more direct supervised collaborative filtering signals based on existing user-item interactions. Extensive experiments on three real-world datasets demonstrate that MixSGCL surpasses state-of-the-art methods, achieving top performance on both accuracy and efficiency. It validates the effectiveness of MixSGCL with our coupled design on supervised graph contrastive learning.
Conceptual Mapping of Controversies
Draude, Claude, Dürrschnabel, Dominik, Hirth, Johannes, Horn, Viktoria, Kropf, Jonathan, Lamla, Jörn, Stumme, Gerd, Uhlmann, Markus
With our work, we contribute towards a qualitative analysis of the discourse on controversies in online news media. For this, we employ Formal Concept Analysis and the economics of conventions to derive conceptual controversy maps. In our experiments, we analyze two maps from different news journals with methods from ordinal data science. We show how these methods can be used to assess the diversity, complexity and potential bias of controversies. In addition to that, we discuss how the diagrams of concept lattices can be used to navigate between news articles.
A Survey of Generative Search and Recommendation in the Era of Large Language Models
Li, Yongqi, Lin, Xinyu, Wang, Wenjie, Feng, Fuli, Pang, Liang, Li, Wenjie, Nie, Liqiang, He, Xiangnan, Chua, Tat-Seng
With the information explosion on the Web, search and recommendation are foundational infrastructures to satisfying users' information needs. As the two sides of the same coin, both revolve around the same core research problem, matching queries with documents or users with items. In the recent few decades, search and recommendation have experienced synchronous technological paradigm shifts, including machine learning-based and deep learning-based paradigms. Recently, the superintelligent generative large language models have sparked a new paradigm in search and recommendation, i.e., generative search (retrieval) and recommendation, which aims to address the matching problem in a generative manner. In this paper, we provide a comprehensive survey of the emerging paradigm in information systems and summarize the developments in generative search and recommendation from a unified perspective. Rather than simply categorizing existing works, we abstract a unified framework for the generative paradigm and break down the existing works into different stages within this framework to highlight the strengths and weaknesses. And then, we distinguish generative search and recommendation with their unique challenges, identify open problems and future directions, and envision the next information-seeking paradigm.
Rabbit's AI Assistant Is Here. And Soon a Camera Wearable Will Be Too
The pathway leading into Rabbit's venue--for the launch event of the R1, an artificial intelligence-powered device announced at CES 2024--was paved with gadgets from the past. First was the orange JVC Videosphere, then the Sony Walkman, a Tamagotchi, a transparent GameBoy Color, heck, even the original Pokédex toy from 1998. At the very end of the hall was Teenage Engineering's Pocket Operator, and across from it, a few concept prototypes of the Rabbit R1. If the Pocket Operator stands out, seeing as it's barely a decade old, that's because the Swedish design-firm Teenage Engineering helped design the R1. And at the launch event, CEO Jesse Lyu announced on stage that Jesper Kouthoofd, founder of Teenage Engineering, has joined Rabbit as its chief design officer (while still maintaining his role as CEO of TE).