• 제목/요약/키워드: Memory-Based Learning

검색결과 556건 처리시간 0.032초

Optimizing Artificial Neural Network-Based Models to Predict Rice Blast Epidemics in Korea

  • Lee, Kyung-Tae;Han, Juhyeong;Kim, Kwang-Hyung
    • The Plant Pathology Journal
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    • 제38권4호
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    • pp.395-402
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    • 2022
  • To predict rice blast, many machine learning methods have been proposed. As the quality and quantity of input data are essential for machine learning techniques, this study develops three artificial neural network (ANN)-based rice blast prediction models by combining two ANN models, the feed-forward neural network (FFNN) and long short-term memory, with diverse input datasets, and compares their performance. The Blast_Weathe long short-term memory r_FFNN model had the highest recall score (66.3%) for rice blast prediction. This model requires two types of input data: blast occurrence data for the last 3 years and weather data (daily maximum temperature, relative humidity, and precipitation) between January and July of the prediction year. This study showed that the performance of an ANN-based disease prediction model was improved by applying suitable machine learning techniques together with the optimization of hyperparameter tuning involving input data. Moreover, we highlight the importance of the systematic collection of long-term disease data.

목표지향적 학습과 기억 (Goal-Directed Learning and Memory)

  • 신연순;한상훈
    • 감성과학
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    • 제16권3호
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    • pp.319-332
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    • 2013
  • 그동안 학습과 기억이 과거의 경험에 의해 구성된다는 측면이 강조되어왔으나, 최근의 연구들은 이들 인지과정이 미래의 보상물을 최대화하는 목표를 달성하기 위해 이루어짐을 조명하였다. 본 개관 논문은 이와 관련된 연구를 소개하고 목표지향적 학습과 기억에 대하여 논의하고자 한다. 먼저 강화 학습에서 내적 모형 기반 학습, 즉 상위 차원의 목표를 달성하기 위해 즉각적인 보상을 가져오지 않음에도 불구하고 특정한 행동을 취하는 과정이 이루어지고, 또한 직접적 강화를 받지 않은 대상으로의 일반화 및 유추가 일어나 미래의 적응적 행동을 가져옴을 보여준 연구들을 소개한다. 또한 위와 같은 목표지향적 학습 과정의 신경학적 기제를 탐색한 연구들을 개관하고, 선조체의 도파민 신호를 기반으로 한 과정이 기억 과정에 역시 영향을 미칠 수 있음을 논의한다. 특히, 기억이 과거의 경험을 모두 동일한 수준으로 부호화하고 인출하는 과정이 아니라, 상위 수준의 목표에 맞춘 의사결정과정의 결과임을 보여주는 연구들을 소개한다. 이러한 연구들은 미래에 얻게 될 보상 정보가 역향적으로 현재의 인지처리에 영향을 줄 수 있음을 시사한다.

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퍼지 신경망을 이용한 퍼지 추론 시스템의 학습 및 추론 (Learning and inference of fuzzy inference system with fuzzy neural network)

  • 장대식;최형일
    • 전자공학회논문지B
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    • 제33B권2호
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    • pp.118-130
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    • 1996
  • Fuzzy inference is very useful in expressing ambiguous problems quantitatively and solving them. But like the most of the knowledge based inference systems. It has many difficulties in constructing rules and no learning capability is available. In this paper, we proposed a fuzzy inference system based on fuzy associative memory to solve such problems. The inference system proposed in this paper is mainly composed of learning phase and inference phase. In the learning phase, the system initializes it's basic structure by determining fuzzy membership functions, and constructs fuzzy rules in the form of weights using learning function of fuzzy associative memory. In the inference phase, the system conducts actual inference using the constructed fuzzy rules. We applied the fuzzy inference system proposed in this paper to a pattern classification problem and show the results in the experiment.

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Traffic-based reinforcement learning with neural network algorithm in fog computing environment

  • Jung, Tae-Won;Lee, Jong-Yong;Jung, Kye-Dong
    • International Journal of Internet, Broadcasting and Communication
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    • 제12권1호
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    • pp.144-150
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    • 2020
  • Reinforcement learning is a technology that can present successful and creative solutions in many areas. This reinforcement learning technology was used to deploy containers from cloud servers to fog servers to help them learn the maximization of rewards due to reduced traffic. Leveraging reinforcement learning is aimed at predicting traffic in the network and optimizing traffic-based fog computing network environment for cloud, fog and clients. The reinforcement learning system collects network traffic data from the fog server and IoT. Reinforcement learning neural networks, which use collected traffic data as input values, can consist of Long Short-Term Memory (LSTM) neural networks in network environments that support fog computing, to learn time series data and to predict optimized traffic. Description of the input and output values of the traffic-based reinforcement learning LSTM neural network, the composition of the node, the activation function and error function of the hidden layer, the overfitting method, and the optimization algorithm.

Sentiment Orientation Using Deep Learning Sequential and Bidirectional Models

  • Alyamani, Hasan J.
    • International Journal of Computer Science & Network Security
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    • 제21권11호
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    • pp.23-30
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    • 2021
  • Sentiment Analysis has become very important field of research because posting of reviews is becoming a trend. Supervised, unsupervised and semi supervised machine learning methods done lot of work to mine this data. Feature engineering is complex and technical part of machine learning. Deep learning is a new trend, where this laborious work can be done automatically. Many researchers have done many works on Deep learning Convolutional Neural Network (CNN) and Long Shor Term Memory (LSTM) Neural Network. These requires high processing speed and memory. Here author suggested two models simple & bidirectional deep leaning, which can work on text data with normal processing speed. At end both models are compared and found bidirectional model is best, because simple model achieve 50% accuracy and bidirectional deep learning model achieve 99% accuracy on trained data while 78% accuracy on test data. But this is based on 10-epochs and 40-batch size. This accuracy can also be increased by making different attempts on epochs and batch size.

뇌 기억-학습 원리를 적용한 중등영어교사 임용시험 준비용 어플 (An Exam Prep App for the Secondary English Teacher Recruitment Exam with Brain-based Memory and Learning Principles)

  • 이혜진
    • 한국콘텐츠학회논문지
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    • 제21권1호
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    • pp.311-320
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    • 2021
  • 현재 국내 국·공립 중등교사가 되기 위한 유일한 등용문은 중등교원 임용시험이며 2014학년도 개정 이후 임용시험의 모든 문항이 서답형으로 전환되었기 때문에 더 완성도 높고 정확하고 견고한 답안 작성이 요구된다. 재인기억을 측정하는 선택형 문항과 비교하면 회상기억을 측정하는 서답형 문항의 경우 정보 인출을 위해 더 많은 인지적 노력이 요구된다. 이 때문에 지속적인 암기 및 인출 연습이 필요하지만 이를 수행할 수 있는 학습 도구가 충분하지 않다. 이러한 맥락에서 본고는 중등영어교사 임용시험 준비용 모바일 어플인 ONE PASS를 구현하였다. 본 어플에서는 특히 인지작용의 근간이 되는 뇌의 작용기제를 반영하여 학습용 콘텐츠를 구현하였으며 학습계획 설정 및 동기측정, 마인드맵, 브레인스토밍, 기출문제 등 다양한 기능을 구안하였다. 본 연구는 학습용 어플 콘텐츠 개발 관련 연구에 이바지함과 동시에 임용시험 수험자들에게 조금이나마 도움이 될 수 있기를 기대한다.

Evaluation of the Effect of Educational Smartphone App for Nursing Students

  • Yeon, Seunguk;Seo, Sukyong
    • International Journal of Advanced Culture Technology
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    • 제7권2호
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    • pp.60-66
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    • 2019
  • The purpose of this study was to compare the effect of educational smartphone app with the effect of learning using conventional paper material. We developed an educational app for nursing students to learn how to read blood pressure and how to take a pulse. Evaluated was the effect of the app-based education by measuring the short term memory (right after the education), the long term memory (a week later) and the satisfaction. 25 college nursing students participated for the experiment group using the app-based education and 25 for the control group using paper-based education. We applied for statistical analysis Fisher's exact test and Independent t-test. The satisfaction of the app user's appeared significantly higher than that of the paper material user's (t=2.322, p=0.024). The short term memory score was 0.23 points higher in the experimental group (6.46 points) than in the control group (6.23 points), which was not statistically significant (t =0.422, p =0.675). Similar result came for the long term memory (t=1.006, p=0.320). After adjusting for the effect of a college grade using ANCOVA, the effect on memory was significantly higher in the experiment group. There might be differences in learning ability between the experimental and the control groups.

Fast Super-Resolution Algorithm Based on Dictionary Size Reduction Using k-Means Clustering

  • Jeong, Shin-Cheol;Song, Byung-Cheol
    • ETRI Journal
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    • 제32권4호
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    • pp.596-602
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    • 2010
  • This paper proposes a computationally efficient learning-based super-resolution algorithm using k-means clustering. Conventional learning-based super-resolution requires a huge dictionary for reliable performance, which brings about a tremendous memory cost as well as a burdensome matching computation. In order to overcome this problem, the proposed algorithm significantly reduces the size of the trained dictionary by properly clustering similar patches at the learning phase. Experimental results show that the proposed algorithm provides superior visual quality to the conventional algorithms, while needing much less computational complexity.

Prediction of the DO concentration using the machine learning algorithm: case study in Oncheoncheon, Republic of Korea

  • Lim, Heesung;An, Hyunuk;Choi, Eunhyuk;Kim, Yeonsu
    • 농업과학연구
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    • 제47권4호
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    • pp.1029-1037
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    • 2020
  • The machine learning algorithm has been widely used in water-related fields such as water resources, water management, hydrology, atmospheric science, water quality, water level prediction, weather forecasting, water discharge prediction, water quality forecasting, etc. However, water quality prediction studies based on the machine learning algorithm are limited compared to other water-related applications because of the limited water quality data. Most of the previous water quality prediction studies have predicted monthly water quality, which is useful information but not enough from a practical aspect. In this study, we predicted the dissolved oxygen (DO) using recurrent neural network with long short-term memory model recurrent neural network long-short term memory (RNN-LSTM) algorithms with hourly- and daily-datasets. Bugok Bridge in Oncheoncheon, located in Busan, where the data was collected in real time, was selected as the target for the DO prediction. The 10-month (temperature, wind speed, and relative humidity) data were used as time prediction inputs, and the 5-year (temperature, wind speed, relative humidity, and rainfall) data were used as the daily forecast inputs. Missing data were filled by linear interpolation. The prediction model was coded based on TensorFlow, an open-source library developed by Google. The performance of the RNN-LSTM algorithm for the hourly- or daily-based water quality prediction was tested and analyzed. Research results showed that the hourly data for the water quality is useful for machine learning, and the RNN-LSTM algorithm has potential to be used for hourly- or daily-based water quality forecasting.

Deep learning-based sensor fault detection using S-Long Short Term Memory Networks

  • Li, Lili;Liu, Gang;Zhang, Liangliang;Li, Qing
    • Structural Monitoring and Maintenance
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    • 제5권1호
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    • pp.51-65
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    • 2018
  • A number of sensing techniques have been implemented for detecting defects in civil infrastructures instead of onsite human inspections in structural health monitoring. However, the issue of faults in sensors has not received much attention. This issue may lead to incorrect interpretation of data and false alarms. To overcome these challenges, this article presents a deep learning-based method with a new architecture of Stateful Long Short Term Memory Neural Networks (S-LSTM NN) for detecting sensor fault without going into details of the fault features. As LSTMs are capable of learning data features automatically, and the proposed method works without an accurate mathematical model. The detection of four types of sensor faults are studied in this paper. Non-stationary acceleration responses of a three-span continuous bridge when under operational conditions are studied. A deep network model is applied to the measured bridge data with estimation to detect the sensor fault. Another set of sensor output data is used to supervise the network parameters and backpropagation algorithm to fine tune the parameters to establish a deep self-coding network model. The response residuals between the true value and the predicted value of the deep S-LSTM network was statistically analyzed to determine the fault threshold of sensor. Experimental study with a cable-stayed bridge further indicated that the proposed method is robust in the detection of the sensor fault.