703 research outputs found
Blurring-Sharpening Process Models for Collaborative Filtering
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.Comment: Accepted by SIGIR 202
SVD-AE: Simple Autoencoders for Collaborative Filtering
Collaborative filtering (CF) methods for recommendation systems have been
extensively researched, ranging from matrix factorization and autoencoder-based
to graph filtering-based methods. Recently, lightweight methods that require
almost no training have been recently proposed to reduce overall computation.
However, existing methods still have room to improve the trade-offs among
accuracy, efficiency, and robustness. In particular, there are no well-designed
closed-form studies for \emph{balanced} CF in terms of the aforementioned
trade-offs. In this paper, we design SVD-AE, a simple yet effective singular
vector decomposition (SVD)-based linear autoencoder, whose closed-form solution
can be defined based on SVD for CF. SVD-AE does not require iterative training
processes as its closed-form solution can be calculated at once. Furthermore,
given the noisy nature of the rating matrix, we explore the robustness against
such noisy interactions of existing CF methods and our SVD-AE. As a result, we
demonstrate that our simple design choice based on truncated SVD can be used to
strengthen the noise robustness of the recommendation while improving
efficiency. Code is available at https://github.com/seoyoungh/svd-ae.Comment: Accepted by IJCAI 202
TimeKit: A Time-series Forecasting-based Upgrade Kit for Collaborative Filtering
Recommender systems are a long-standing research problem in data mining and
machine learning. They are incremental in nature, as new user-item interaction
logs arrive. In real-world applications, we need to periodically train a
collaborative filtering algorithm to extract user/item embedding vectors and
therefore, a time-series of embedding vectors can be naturally defined. We
present a time-series forecasting-based upgrade kit (TimeKit), which works in
the following way: it i) first decides a base collaborative filtering
algorithm, ii) extracts user/item embedding vectors with the base algorithm
from user-item interaction logs incrementally, e.g., every month, iii) trains
our time-series forecasting model with the extracted time-series of embedding
vectors, and then iv) forecasts the future embedding vectors and recommend with
their dot-product scores owing to a recent breakthrough in processing
complicated time-series data, i.e., neural controlled differential equations
(NCDEs). Our experiments with four real-world benchmark datasets show that the
proposed time-series forecasting-based upgrade kit can significantly enhance
existing popular collaborative filtering algorithms.Comment: Accepted at IEEE BigData 202
Characteristics of Classified Aerosol Types in South Korea during the MAPS-Seoul Campaign
During the Megacity Air Pollution Studies-Seoul (MAPS-Seoul) campaign from May to June 2015, aerosol optical properties in Korea were obtained based on the AERONET sunphotometer measurement at five sites (Anmyon, Gangneung_WNU, Gosan_SNU, Hankuk_UFS, and Yonsei_University). Using this dataset, we examine regional aerosol types by applying a number of known aerosol classification methods. We thoroughly utilize five different methods to categorize the regional aerosol types and evaluate the results from each method by inter-comparison. The differences and similarities among the results are also discussed, contingent upon the usage of AERONET inversion products, such as the single scattering albedo. Despite several small differences, all five methods suggest the same general features in terms of the regionally dominant aerosol type: Fine-mode aerosols with highly absorbing radiative properties dominate at HankukUFS and Yonsei_University; non-absorbing fine-mode particles form a large portion of the aerosol at Gosan_SNU; and coarse-mode particles cause some effects at Anmyon. The analysis of 3-day back-trajectories is also performed to determine the relationship between classified types at each site and the regional transport pattern. In particular, the spatiotemporally short-scale transport appears to have a large influence on the local aerosol properties. As a result, we find that the domestic emission in Korea significantly contributes to the high dominance of radiation-absorbing aerosols in the Seoul metropolitan area and the air-mass transport from China largely affects the western coastal sites, such as Anmyon and Gosan_SNU
Biopsychosocial factors of gaming disorder: a systematic review employing screening tools with well-defined psychometric properties
Background and aimsConsidering the growing number of gamers worldwide and increasing public concerns regarding the negative consequences of problematic gaming, the aim of the present systematic review was to provide a comprehensive overview of gaming disorder (GD) by identifying empirical studies that investigate biological, psychological, and social factors of GD using screening tools with well-defined psychometric properties.Materials and methodsA systematic literature search was conducted through PsycINFO, PubMed, RISS, and KISS, and papers published up to January 2022 were included. Studies were screened based on the GD diagnostic tool usage, and only five scales with well-established psychometric properties were included. A total of 93 studies were included in the synthesis, and the results were classified into three groups based on biological, psychological, and social factors.ResultsBiological factors (n = 8) included reward, self-concept, brain structure, and functional connectivity. Psychological factors (n = 67) included psychiatric symptoms, psychological health, emotion regulation, personality traits, and other dimensions. Social factors (n = 29) included family, social interaction, culture, school, and social support.DiscussionWhen the excess amount of assessment tools with varying psychometric properties were controlled for, mixed results were observed with regards to impulsivity, social relations, and family-related factors, and some domains suffered from a lack of study results to confirm any relevant patterns.ConclusionMore longitudinal and neurobiological studies, consensus on a diagnostic tool with well-defined psychometric properties, and an in-depth understanding of gaming-related factors should be established to settle the debate regarding psychometric weaknesses of the current diagnostic system and for GD to gain greater legitimacy in the field of behavioral addiction
Comparison of PM2.5 in Seoul, Korea Estimated from the Various Ground-Based and Satellite AOD
Based on multiple linear regression (MLR) models, we estimated the PM2.5 at Seoul using a number of aerosol optical depth (AOD) values obtained from ground-based and satellite remote sensing observations. To construct the MLR model, we consider various parameters related to the ambient meteorology and air quality. In general, all AOD values resulted in the high quality of PM2.5 estimation through the MLR method: mostly correlation coefficients >~0.8. Among various polar-orbit satellite AODs, AOD values from the MODIS measurement contribute to better PM2.5 estimation. We also found that the quality of estimated PM2.5 shows some seasonal variation; the estimated PM2.5 values consistently have the highest correlation with in situ PM2.5 in autumn, but are not well established in winter, probably due to the difficulty of AOD retrieval in the winter condition. MLR modeling using spectral AOD values from the ground-based measurements revealed that the accuracy of PM2.5 estimation does not depend on the selected wavelength. Although all AOD values used in this study resulted in a reasonable accuracy range of PM2.5 estimation, our analyses of the difference in estimated PM2.5 reveal the importance of utilizing the proper AOD for the best quality of PM2.5 estimation
New Era of Air Quality Monitoring from Space: Geostationary Environment Monitoring Spectrometer (GEMS)
GEMS will monitor air quality over Asia at unprecedented spatial and temporal resolution from GEO for the first time, providing column measurements of aerosol, ozone and their precursors (nitrogen dioxide, sulfur dioxide and formaldehyde).
Geostationary Environment Monitoring Spectrometer (GEMS) is scheduled for launch in late 2019 - early 2020 to monitor Air Quality (AQ) at an unprecedented spatial and temporal resolution from a Geostationary Earth Orbit (GEO) for the first time. With the development of UV-visible spectrometers at sub-nm spectral resolution and sophisticated retrieval algorithms, estimates of the column amounts of atmospheric pollutants (O3, NO2, SO2, HCHO, CHOCHO and aerosols) can be obtained. To date, all the UV-visible satellite missions monitoring air quality have been in Low Earth orbit (LEO), allowing one to two observations per day. With UV-visible instruments on GEO platforms, the diurnal variations of these pollutants can now be determined. Details of the GEMS mission are presented, including instrumentation, scientific algorithms, predicted performance, and applications for air quality forecasts through data assimilation. GEMS will be onboard the GEO-KOMPSAT-2 satellite series, which also hosts the Advanced Meteorological Imager (AMI) and Geostationary Ocean Color Imager (GOCI)-2. These three instruments will provide synergistic science products to better understand air quality, meteorology, the long-range transport of air pollutants, emission source distributions, and chemical processes. Faster sampling rates at higher spatial resolution will increase the probability of finding cloud-free pixels, leading to more observations of aerosols and trace gases than is possible from LEO. GEMS will be joined by NASA's TEMPO and ESA's Sentinel-4 to form a GEO AQ satellite constellation in early 2020s, coordinated by the Committee on Earth Observation Satellites (CEOS)
Evaluating the Inclusion of Women’s Voices and Feminine Framings on Climate Change in The New York Times
Climate change, one of the most pressing issues facing society, has captured the attention of women leaders in recent years. Most notably, Alexandria Ocasio- Cortez and Greta Thunberg’s work has raised media and policy attention on the issue. The two women’s leadership and activism spark the following questions: How has the inclusion of women’s voices affected and influenced the public discourse on climate change? What role does gender play in shaping our construction and understanding of climate change?
To answer these questions, I focus on American print media, specifically The New York Times, and examine the inclusion of women authors, women claims-makers, and feminine ideas in select time periods from 1988 to 2019. The media is a crucial arena to evaluate the deployment of gender as it is one location where climate change is constructed and debated. Climate change also relies on the news to effectively communicate scientific knowledge and policy information to the public. In addition to measuring the representation of women and feminine values, I also test several intuitions on whether the presence of women, as authors and claims-makers, influences the discourse. Lastly, I share illustrative examples from a close reading of articles.
The results of my analyses show a relatively steady increase in the representation of women authors, women speakers, and ‘Feminine’ articles. Articles with at least one female speaker were more likely to have a ‘Feminine’ discussion. Despite the increase in representation, my qualitative analysis finds a unique silence on the gendered nature of climate change. However, the few women’s voices captured by the study exhibit notable commitment to addressing climate change. Thus, I argue that increased representation and recognition of women and feminine ideas can address the gaps in the discourse and more effectively draw attention to climate change
Potential improvement of XCO2 retrieval of the OCO-2 by having aerosol information from the A-train satellites
Near-real time observations of aerosol properties could have a potential to improve the accuracy of XCO2 retrieval algorithm in operational satellite missions. In this study, we developed a retrieval algorithm of XCO2 (Yonsei Retrieval Algorithm; YCAR) based on the Optimal Estimation (OE) method that used aerosol information at the location of the Orbiting Carbon Observatory-2 (OCO-2) measurement from co-located measurement of the Afternoon constellation (A-train) such as the Cloud-Aerosol Lidar with Orthogonal Polarization (CALIOP) onboard the Cloud-Aerosol Lidar and Infrared Pathfinder Observation (CALIPSO) and the MODerate-resolution Imaging Spectrometer (MODIS) onboard the Aqua. Specifically, we used optical depth, vertical profile, and optical properties of aerosol from MODIS and CALIOP data. We validated retrieval results to the Total Carbon Column Observing Network (TCCON) ground-based measurements and found general consistency. The impact of observed aerosol information and its constraint was examined by retrieval tests using different settings. The effect of using additional aerosol information was analyzed in connection with the bias correction process of the operational retrieval algorithm. YCAR using a priori aerosol loading parameters from co-located satellite measurements and less constraint of aerosol optical properties made comparable results with operational data with the bias correction process in three of the four cases subject to this study. Our work provides evidence supporting the bias correction process of operational algorithms and quantitatively presents the effectiveness of synergic use of multiple satellites (e.g. A-train) and better treatment of aerosol information
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