Personal Assistant Systems
The Future of AI: Exploring the Potential of Large Concept Models
The field of Artificial Intelligence (AI) continues to drive transformative innovations, with significant progress in conversational interfaces, autonomous vehicles, and intelligent content creation. Since the launch of ChatGPT in late 2022, the rise of Generative AI has marked a pivotal era, with the term Large Language Models (LLMs) becoming a ubiquitous part of daily life. LLMs have demonstrated exceptional capabilities in tasks such as text summarization, code generation, and creative writing. However, these models are inherently limited by their token-level processing, which restricts their ability to perform abstract reasoning, conceptual understanding, and efficient generation of long-form content. To address these limitations, Meta has introduced Large Concept Models (LCMs), representing a significant shift from traditional token-based frameworks. LCMs use concepts as foundational units of understanding, enabling more sophisticated semantic reasoning and context-aware decision-making. Given the limited academic research on this emerging technology, our study aims to bridge the knowledge gap by collecting, analyzing, and synthesizing existing grey literature to provide a comprehensive understanding of LCMs. Specifically, we (i) identify and describe the features that distinguish LCMs from LLMs, (ii) explore potential applications of LCMs across multiple domains, and (iii) propose future research directions and practical strategies to advance LCM development and adoption.
Efficient and Responsible Adaptation of Large Language Models for Robust and Equitable Top-k Recommendations
Kaur, Kirandeep, Chadha, Manya, Gupta, Vinayak, Shah, Chirag
Conventional recommendation systems (RSs) are typically optimized to enhance performance metrics uniformly across all training samples, inadvertently overlooking the needs of diverse user populations. The performance disparity among various populations can harm the model's robustness to sub-populations due to the varying user properties. While large language models (LLMs) show promise in enhancing RS performance, their practical applicability is hindered by high costs, inference latency, and degraded performance on long user queries. To address these challenges, we propose a hybrid task allocation framework designed to promote social good by equitably serving all user groups. By adopting a two-phase approach, we promote a strategic assignment of tasks for efficient and responsible adaptation of LLMs. Our strategy works by first identifying the weak and inactive users that receive a suboptimal ranking performance by RSs. Next, we use an in-context learning approach for such users, wherein each user interaction history is contextualized as a distinct ranking task. We evaluate our hybrid framework by incorporating eight different recommendation algorithms and three different LLMs -- both open and close-sourced. Our results on three real-world datasets show a significant reduction in weak users and improved robustness to subpopulations without disproportionately escalating costs.
Reolink unveils Altas Wireless Security System with 24/7 2K recording
Reolink has unveiled the Altas Wireless Security System, a battery-powered camera setup capable of delivering 24/7 recording in 2K resolution. Designed with flexibility and ease of use in mind, the system targets homeowners who want reliable surveillance without technical headaches. Unveiled this week at CES in Las Vegas, the Altas Wireless Security System includes two 2K bullet-style Altas cameras, two 6-watt solar panels, and a Home Hub for centralized management. Each camera features a 20,000mAh battery, providing up to seven days of continuous recording. With just two hours of sunlight daily, the solar panels keep the cameras running around the clock, reducing reliance on motion detection.
Swiping in Japan: how Gen Z is changing the dating app game
One day in October, 26-year-old Seokjin decided to download Tapple, a popular dating app in Japan. The business consultant, who asked to go by his first name for privacy reasons, said that he wanted someone he could lean on after starting his first job in April and feeling overworked. "Around August and September I was constantly thinking, why do I have to work so much?" he says. "I wanted my life to have more of a purpose and have someone that I could spend it with and go on trips with, someone who would be on my team when things were rough -- that's why I started using the app."
A Survey on Federated Learning in Human Sensing
Li, Mohan, Gjoreski, Martin, Barbiero, Pietro, Slapniฤar, Gaลกper, Luลกtrek, Mitja, Lane, Nicholas D., Langheinrich, Marc
Human Sensing, a field that leverages technology to monitor human activities, psycho-physiological states, and interactions with the environment, enhances our understanding of human behavior and drives the development of advanced services that improve overall quality of life. However, its reliance on detailed and often privacy-sensitive data as the basis for its machine learning (ML) models raises significant legal and ethical concerns. The recently proposed ML approach of Federated Learning (FL) promises to alleviate many of these concerns, as it is able to create accurate ML models without sending raw user data to a central server. While FL has demonstrated its usefulness across a variety of areas, such as text prediction and cyber security, its benefits in Human Sensing are under-explored, given the particular challenges in this domain. This survey conducts a comprehensive analysis of the current state-of-the-art studies on FL in Human Sensing, and proposes a taxonomy and an eight-dimensional assessment for FL approaches. Through the eight-dimensional assessment, we then evaluate whether the surveyed studies consider a specific FL-in-Human-Sensing challenge or not. Finally, based on the overall analysis, we discuss open challenges and highlight five research aspects related to FL in Human Sensing that require urgent research attention. Our work provides a comprehensive corpus of FL studies and aims to assist FL practitioners in developing and evaluating solutions that effectively address the real-world complexities of Human Sensing.
InterFormer: Towards Effective Heterogeneous Interaction Learning for Click-Through Rate Prediction
Zeng, Zhichen, Liu, Xiaolong, Hang, Mengyue, Liu, Xiaoyi, Zhou, Qinghai, Yang, Chaofei, Liu, Yiqun, Ruan, Yichen, Chen, Laming, Chen, Yuxin, Hao, Yujia, Xu, Jiaqi, Nie, Jade, Liu, Xi, Zhang, Buyun, Wen, Wei, Yuan, Siyang, Wang, Kai, Chen, Wen-Yen, Han, Yiping, Li, Huayu, Yang, Chunzhi, Long, Bo, Yu, Philip S., Tong, Hanghang, Yang, Jiyan
Click-through rate (CTR) prediction, which predicts the probability of a user clicking an ad, is a fundamental task in recommender systems. The emergence of heterogeneous information, such as user profile and behavior sequences, depicts user interests from different aspects. A mutually beneficial integration of heterogeneous information is the cornerstone towards the success of CTR prediction. However, most of the existing methods suffer from two fundamental limitations, including (1) insufficient inter-mode interaction due to the unidirectional information flow between modes, and (2) aggressive information aggregation caused by early summarization, resulting in excessive information loss. To address the above limitations, we propose a novel module named InterFormer to learn heterogeneous information interaction in an interleaving style. To achieve better interaction learning, InterFormer enables bidirectional information flow for mutually beneficial learning across different modes. To avoid aggressive information aggregation, we retain complete information in each data mode and use a separate bridging arch for effective information selection and summarization. Our proposed InterFormer achieves state-of-the-art performance on three public datasets and a large-scale industrial dataset.
KGIF: Optimizing Relation-Aware Recommendations with Knowledge Graph Information Fusion
Jeon, Dong Hyun, Sun, Wenbo, Song, Houbing Herbert, Liu, Dongfang, Alvaro, Velasquez, Xie, Yixin Chloe, Niu, Shuteng
While deep-learning-enabled recommender systems demonstrate strong performance benchmarks, many struggle to adapt effectively in real-world environments due to limited use of user-item relationship data and insufficient transparency in recommendation generation. Traditional collaborative filtering approaches fail to integrate multifaceted item attributes, and although Factorization Machines account for item-specific details, they overlook broader relational patterns. Collaborative knowledge graph-based models have progressed by embedding user-item interactions with item-attribute relationships, offering a holistic perspective on interconnected entities. However, these models frequently aggregate attribute and interaction data in an implicit manner, leaving valuable relational nuances underutilized. This study introduces the Knowledge Graph Attention Network with Information Fusion (KGIF), a specialized framework designed to merge entity and relation embeddings explicitly through a tailored self-attention mechanism. The KGIF framework integrates reparameterization via dynamic projection vectors, enabling embeddings to adaptively represent intricate relationships within knowledge graphs. This explicit fusion enhances the interplay between user-item interactions and item-attribute relationships, providing a nuanced balance between user-centric and item-centric representations. An attentive propagation mechanism further optimizes knowledge graph embeddings, capturing multi-layered interaction patterns. The contributions of this work include an innovative method for explicit information fusion, improved robustness for sparse knowledge graphs, and the ability to generate explainable recommendations through interpretable path visualization.
RecKG: Knowledge Graph for Recommender Systems
Kwon, Junhyuk, Ahn, Seokho, Seo, Young-Duk
Knowledge graphs have proven successful in integrating heterogeneous data across various domains. However, there remains a noticeable dearth of research on their seamless integration among heterogeneous recommender systems, despite knowledge graph-based recommender systems garnering extensive research attention. This study aims to fill this gap by proposing RecKG, a standardized knowledge graph for recommender systems. RecKG ensures the consistent representation of entities across different datasets, accommodating diverse attribute types for effective data integration. Through a meticulous examination of various recommender system datasets, we select attributes for RecKG, ensuring standardized formatting through consistent naming conventions. By these characteristics, RecKG can seamlessly integrate heterogeneous data sources, enabling the discovery of additional semantic information within the integrated knowledge graph. We apply RecKG to standardize real-world datasets, subsequently developing an application for RecKG using a graph database. Finally, we validate RecKG's achievement in interoperability through a qualitative evaluation between RecKG and other studies.
Want to See How Streaming Services Will Change in 2025? Check Your Phone.
Sign up for the Slatest to get the most insightful analysis, criticism, and advice out there, delivered to your inbox daily. Your favorite streaming app may soon no longer be just a "streaming app" per se but an overall entertainment app that functions as a cross-medium platform of its own--and a necessity on both your smartphone and smart TV. On Monday, Peacock, the NBCUniversal service that catapulted off a successful 2024 to become one of the most popular streamers in the world, rolled out a bunch of new goodies in its latest mobile update, part of the testing phase for a gradual expansion of platform features. Subscribers will now have access to a significant array of pilot programs: new engines for discovery and for personalized recommendations, bonus clips for beloved shows, and even NBC-themed "mini-games" that will be updated daily to adapt to the latest broadcasts in the sports and reality-TV schedules. "After presenting the Paris Olympics on Peacock and testing interactive features like'Choose Your Reality' for shows like Real Housewives, we've learned that fans want to have options in their viewing experience and dive deeper into their favorite content," John Jelley, senior vice president of product and user experience at Peacock, told me. He added that the platform is "piloting new features" to allow users to interact with sports and TV shows "so they can indulge their obsessions in a way that's fun, super simple, and all in one place."
Gemini AI smarts are coming to Google Home to make the Assistant a better conversationalist
During CES 2025, I had a chance to check out a demo of the way Google is integrating Gemini capabilities into its smart home platform via devices like the Nest Audio, Nest Hub and Nest Cameras. The main takeaway is that the conversations you have with the Google Assistant will feel more natural. Personally, I'd appreciate being able to ask questions as they pop in my head, without having to formulate some Assistant-friendly sentence before speaking -- what I saw makes me feel like my wish could come true. To kick things off, you'll still say "Hey Google," but for follow-up questions you can skip the prompt and the Assistant will be able to hold on to the thread of your conversation. During the demonstration, held in a simulated (and very posh) kitchen, the Google representative asked things like what to cook with ingredients he had on hand (chicken and spinach).