Personal Assistant Systems
Automatic Feature Induction for Stagewise Collaborative Filtering
Recent approaches to collaborative filtering have concentrated on estimating an algebraic or statistical model, and using the model for predicting missing ratings. In this paper we observe that different models have relative advantages in different regions of the input space. This motivates our approach of using stagewise linear combinations of collaborative filtering algorithms, with non-constant combination coefficients based on kernel smoothing. The resulting stagewise model is computationally scalable and outperforms a wide selection of state-of-the-art collaborative filtering algorithms.
Check your iPhone NOW: Apple is cutting support for App Store, Siri and Maps on several smartphones
If you're the proud owner of a retro iPhone that's over 10 years old, you may soon be forced to splash out on an upgrade. That's because Apple is cutting support for several online services, like the App Store, Siri and Maps, on devices running an operating system from iOS 11 to iOS 11.2.6. So if you own a handset which can't upgrade to iOS 11.3 at the very least, it will be rendered largely defunct from May 2023. Although Apple is known to stop providing bug and security updates to older operating systems, this will mark the first time it has actively reduced their functionality. Currently, any iPhone running a version of iOS 11 can update to at least iOS 12.5.4,
Blurring-Sharpening Process Models for Collaborative Filtering
Choi, Jeongwhan, Hong, Seoyoung, Park, Noseong, Cho, Sung-Bae
Collaborative filtering is one of the most fundamental topics for recommender systems. Various methods have been proposed for collaborative filtering, ranging from matrix factorization to graph convolutional methods. Being inspired by recent successes of graph filtering-based methods and score-based generative models (SGMs), we present a novel concept of blurring-sharpening process model (BSPM). SGMs and BSPMs share the same processing philosophy that new information can be discovered (e.g., new images are generated in the case of SGMs) while original information is first perturbed and then recovered to its original form. However, SGMs and our BSPMs deal with different types of information, and their optimal perturbation and recovery processes have fundamental discrepancies. Therefore, our BSPMs have different forms from SGMs. In addition, our concept not only theoretically subsumes many existing collaborative filtering models but also outperforms them in terms of Recall and NDCG in the three benchmark datasets, Gowalla, Yelp2018, and Amazon-book. In addition, the processing time of our method is comparable to other fast baselines. Our proposed concept has much potential in the future to be enhanced by designing better blurring (i.e., perturbation) and sharpening (i.e., recovery) processes than what we use in this paper.
How artificial intelligence (AI) increases productivity for your small business
If you follow business technology trends, you've likely heard that in the future artificial intelligence will play a role in almost every aspect of business operations -- from sales and marketing to the customer experience. While AI is not yet mainstream, it is gaining traction among many businesses. People use it more than they realize, and there are possibilities across every industry. Once only available to the largest, most financially sound corporations, AI and machine learning are finding their way into the small businesses that make up the backbone of the United States economy. They are reshaping the way firms conduct business, allowing owners to do more with less.
A dynamic Bayesian optimized active recommender system for curiosity-driven Human-in-the-loop automated experiments
Biswas, Arpan, Liu, Yongtao, Creange, Nicole, Liu, Yu-Chen, Jesse, Stephen, Yang, Jan-Chi, Kalinin, Sergei V., Ziatdinov, Maxim A., Vasudevan, Rama K.
Optimization of experimental materials synthesis and characterization through active learning methods has been growing over the last decade, with examples ranging from measurements of diffraction on combinatorial alloys at synchrotrons, to searches through chemical space with automated synthesis robots for perovskites. In virtually all cases, the target property of interest for optimization is defined apriori with limited human feedback during operation. In contrast, here we present the development of a new type of human in the loop experimental workflow, via a Bayesian optimized active recommender system (BOARS), to shape targets on the fly, employing human feedback. We showcase examples of this framework applied to pre-acquired piezoresponse force spectroscopy of a ferroelectric thin film, and then implement this in real time on an atomic force microscope, where the optimization proceeds to find symmetric piezoresponse amplitude hysteresis loops. It is found that such features appear more affected by subsurface defects than the local domain structure. This work shows the utility of human-augmented machine learning approaches for curiosity-driven exploration of systems across experimental domains. The analysis reported here is summarized in Colab Notebook for the purpose of tutorial and application to other data: https://github.com/arpanbiswas52/varTBO
Persuading to Prepare for Quitting Smoking with a Virtual Coach: Using States and User Characteristics to Predict Behavior
Albers, Nele, Neerincx, Mark A., Brinkman, Willem-Paul
Despite their prevalence in eHealth applications for behavior change, persuasive messages tend to have small effects on behavior. Conditions or states (e.g., confidence, knowledge, motivation) and characteristics (e.g., gender, age, personality) of persuadees are two promising components for more effective algorithms for choosing persuasive messages. However, it is not yet sufficiently clear how well considering these components allows one to predict behavior after persuasive attempts, especially in the long run. Since collecting data for many algorithm components is costly and places a burden on users, a better understanding of the impact of individual components in practice is welcome. This can help to make an informed decision on which components to use. We thus conducted a longitudinal study in which a virtual coach persuaded 671 daily smokers to do preparatory activities for quitting smoking and becoming more physically active, such as envisioning one's desired future self. Based on the collected data, we designed a Reinforcement Learning (RL)-approach that considers current and future states to maximize the effort people spend on their activities. Using this RL-approach, we found, based on leave-one-out cross-validation, that considering states helps to predict both behavior and future states. User characteristics and especially involvement in the activities, on the other hand, only help to predict behavior if used in combination with states rather than alone. We see these results as supporting the use of states and involvement in persuasion algorithms. Our dataset is available online.
Ericson: An Interactive Open-Domain Conversational Search Agent
Wang, Zihao, Ahmadvand, Ali, Choi, Jason, Karisani, Payam, Agichtein, Eugene
Open-domain conversational search (ODCS) aims to provide valuable, up-to-date information, while maintaining natural conversations to help users refine and ultimately answer information needs. However, creating an effective and robust ODCS agent is challenging. In this paper, we present a fully functional ODCS system, Ericson, which includes state-of-the-art question answering and information retrieval components, as well as intent inference and dialogue management models for proactive question refinement and recommendations. Our system was stress-tested in the Amazon Alexa Prize, by engaging in live conversations with thousands of Alexa users, thus providing empirical basis for the analysis of the ODCS system in real settings. Our interaction data analysis revealed that accurate intent classification, encouraging user engagement, and careful proactive recommendations contribute most to the users satisfaction. Our study further identifies limitations of the existing search techniques, and can serve as a building block for the next generation of ODCS agents.
Tinder is working on secret $500-a-month version of app
Tinder is planning to roll out a $500-a-month ultra premium version of the app that gives users 24/7 access to a dating coach. 'Tinder VAULT' would go above and beyond the three paid subscriptions already offered to users - Tinder Plus, Tinder Gold and Tinder Premium. The new offering - which is still in beta testing - also promises to connect daters to the app's most active, influential and sought-after members. The company's Chief Product Officer Mark Van Ryswyk confirmed Monday the test roll-out of the luxe new subscription plan, but was cagey on specifics. 'Tinder VAULT' would go above and beyond the three paid subscriptions already offered to users - Tinder Plus, Tinder Gold and Tinder Premium.
Learning personalized reward functions with Interaction-Grounded Learning (IGL)
Rewards play a crucial role in reinforcement learning (RL). A good choice of reward function motivates an agent to explore and learn which actions are valuable. The feedback that an agent receives via rewards allows them to update their behavior and learn useful policies. However, designing reward functions is complicated and cumbersome, even for domain experts. Automatically inferring a reward function is more desirable for end-users interacting with a system.
Act fast! The Amazon Echo Show 8 drops to its LOWEST price ever
Now £25 of its original price, the voice-controlled smart speaker with improved audio is equipped with Alexa and can be added to any room in your home, and with a simple command, you can ask for music, news, weather updates, and more. You can also make calls and control compatible smart home devices, including lighting and home security.