339 research outputs found
An Intelligent Knowledge Graph-Based Directional Data Clustering and Feature Selection for Improved Education
With advancements in technology and the increasing availability of data, there is a growing interest in leveraging intelligent learning models to enhance the educational experience and improve learning outcomes. The construction of intelligent learning models, supported by knowledge graphs, has emerged as a promising approach to revolutionizing the field of education. With the vast number of educational resources and data available, knowledge graphs provide a structured and interconnected representation of knowledge, enabling intelligent systems to leverage this wealth of information. This paper aimed to construct an effective automated Intelligent Learning Model with the integration of Knowledge Graphs. The automated intelligent model comprises the directional data clustering (DDC) integrated with the Voting based Integrated effective Feature Selection model through the LSTM-integrated Grasshopper Algorithm (LSTM_GOA). The data for analysis is collected from educational institutions in China. Through the framed LSTM_GOA model the performance is evaluated fro the analysis of the student educational performance. The simulation analysis expressed that the developed model exhibits a higher classification performance compared with the conventional technique in terms of accuracy and Mean Square Error (MSE)
To Recommend or Not: Recommendability Identification in Conversations with Pre-trained Language Models
Most current recommender systems primarily focus on what to recommend,
assuming users always require personalized recommendations. However, with the
widely spread of ChatGPT and other chatbots, a more crucial problem in the
context of conversational systems is how to minimize user disruption when we
provide recommendation services for users. While previous research has
extensively explored different user intents in dialogue systems, fewer efforts
are made to investigate whether recommendations should be provided. In this
paper, we formally define the recommendability identification problem, which
aims to determine whether recommendations are necessary in a specific scenario.
First, we propose and define the recommendability identification task, which
investigates the need for recommendations in the current conversational
context. A new dataset is constructed. Subsequently, we discuss and evaluate
the feasibility of leveraging pre-trained language models (PLMs) for
recommendability identification. Finally, through comparative experiments, we
demonstrate that directly employing PLMs with zero-shot results falls short of
meeting the task requirements. Besides, fine-tuning or utilizing soft prompt
techniques yields comparable results to traditional classification methods. Our
work is the first to study recommendability before recommendation and provides
preliminary ways to make it a fundamental component of the future
recommendation system
Human activities accelerated the degradation of saline seepweed red beaches by amplifying topâdown and bottomâup forces
Salt marshes dominated by saline seepweed (Suaeda heteroptera) provide important ecosystem services such as sequestering carbon (blue carbon), maintaining healthy fisheries, and protecting shorelines. These salt marshes also constitute stunning red beach landscapes, and the resulting tourism significantly contributes to the local economy. However, land use change and degradation have led to a substantial loss of the red beach area. It remains unclear how human activities influence the topâdown and bottomâup forces that regulate the distribution and succession of these salt marshes and lead to the degradation of the red beaches. We examined how bottomâup forces influenced the germination, emergence, and colonization of saline seepweed with field measurements and a laboratory experiment. We also examined whether topâdown forces affected the red beach distribution by conducting a field survey for crab burrows and density, laboratory feeding trials, and waterbird investigations. The higher sediment accretion rate induced by human activities limited the establishment of new red beaches. The construction of tourism facilities and the frequent presence of tourists reduced the density of waterbirds, which in turn increased the density of crabs, intensifying the topâdown forces such as predators and herbivores that drive the degradation of the coastal red beaches. Our results show that sediment accretion and plantâherbivory changes induced by human activities were likely the two primary ecological processes leading to the degradation of the red beaches. Human activities significantly shaped the abundance and distribution of the red beaches by altering both topâdown and bottomâup ecological processes. Our findings can help us better understand the dynamics of salt marshes and have implications for the management and restoration of coastal wetlands
DeCrisisMB: Debiased Semi-Supervised Learning for Crisis Tweet Classification via Memory Bank
During crisis events, people often use social media platforms such as Twitter
to disseminate information about the situation, warnings, advice, and support.
Emergency relief organizations leverage such information to acquire timely
crisis circumstances and expedite rescue operations. While existing works
utilize such information to build models for crisis event analysis,
fully-supervised approaches require annotating vast amounts of data and are
impractical due to limited response time. On the other hand, semi-supervised
models can be biased, performing moderately well for certain classes while
performing extremely poorly for others, resulting in substantially negative
effects on disaster monitoring and rescue. In this paper, we first study two
recent debiasing methods on semi-supervised crisis tweet classification. Then
we propose a simple but effective debiasing method, DeCrisisMB, that utilizes a
Memory Bank to store and perform equal sampling for generated pseudo-labels
from each class at each training iteration. Extensive experiments are conducted
to compare different debiasing methods' performance and generalization ability
in both in-distribution and out-of-distribution settings. The results
demonstrate the superior performance of our proposed method. Our code is
available at https://github.com/HenryPengZou/DeCrisisMB.Comment: Accepted by EMNLP 2023 (Findings
Graph-based Village Level Poverty Identification
Poverty status identification is the first obstacle to eradicating poverty.
Village-level poverty identification is very challenging due to the arduous
field investigation and insufficient information. The development of the Web
infrastructure and its modeling tools provides fresh approaches to identifying
poor villages. Upon those techniques, we build a village graph for village
poverty status identification. By modeling the village connections as a graph
through the geographic distance, we show the correlation between village
poverty status and its graph topological position and identify two key factors
(Centrality, Homophily Decaying effect) for identifying villages. We further
propose the first graph-based method to identify poor villages. It includes a
global Centrality2Vec module to embed village centrality into the dense vector
and a local graph distance convolution module that captures the decaying
effect. In this paper, we make the first attempt to interpret and identify
village-level poverty from a graph perspective.Comment: 5 pages, accepted by theWebConf 202
Intersectional Two-sided Fairness in Recommendation
Fairness of recommender systems (RS) has attracted increasing attention
recently. Based on the involved stakeholders, the fairness of RS can be divided
into user fairness, item fairness, and two-sided fairness which considers both
user and item fairness simultaneously. However, we argue that the
intersectional two-sided unfairness may still exist even if the RS is two-sided
fair, which is observed and shown by empirical studies on real-world data in
this paper, and has not been well-studied previously. To mitigate this problem,
we propose a novel approach called Intersectional Two-sided Fairness
Recommendation (ITFR). Our method utilizes a sharpness-aware loss to perceive
disadvantaged groups, and then uses collaborative loss balance to develop
consistent distinguishing abilities for different intersectional groups.
Additionally, predicted score normalization is leveraged to align positive
predicted scores to fairly treat positives in different intersectional groups.
Extensive experiments and analyses on three public datasets show that our
proposed approach effectively alleviates the intersectional two-sided
unfairness and consistently outperforms previous state-of-the-art methods.Comment: accepted by WWW202
Temporal-spatial Correlation Attention Network for Clinical Data Analysis in Intensive Care Unit
In recent years, medical information technology has made it possible for
electronic health record (EHR) to store fairly complete clinical data. This has
brought health care into the era of "big data". However, medical data are often
sparse and strongly correlated, which means that medical problems cannot be
solved effectively. With the rapid development of deep learning in recent
years, it has provided opportunities for the use of big data in healthcare. In
this paper, we propose a temporal-saptial correlation attention network (TSCAN)
to handle some clinical characteristic prediction problems, such as predicting
death, predicting length of stay, detecting physiologic decline, and
classifying phenotypes. Based on the design of the attention mechanism model,
our approach can effectively remove irrelevant items in clinical data and
irrelevant nodes in time according to different tasks, so as to obtain more
accurate prediction results. Our method can also find key clinical indicators
of important outcomes that can be used to improve treatment options. Our
experiments use information from the Medical Information Mart for Intensive
Care (MIMIC-IV) database, which is open to the public. Finally, we have
achieved significant performance benefits of 2.0\% (metric) compared to other
SOTA prediction methods. We achieved a staggering 90.7\% on mortality rate,
45.1\% on length of stay. The source code can be find:
\url{https://github.com/yuyuheintju/TSCAN}
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