• 제목/요약/키워드: Feature Parameter

검색결과 528건 처리시간 0.028초

Personalized Product Recommendation Method for Analyzing User Behavior Using DeepFM

  • Xu, Jianqiang;Hu, Zhujiao;Zou, Junzhong
    • Journal of Information Processing Systems
    • /
    • 제17권2호
    • /
    • pp.369-384
    • /
    • 2021
  • In a personalized product recommendation system, when the amount of log data is large or sparse, the accuracy of model recommendation will be greatly affected. To solve this problem, a personalized product recommendation method using deep factorization machine (DeepFM) to analyze user behavior is proposed. Firstly, the K-means clustering algorithm is used to cluster the original log data from the perspective of similarity to reduce the data dimension. Then, through the DeepFM parameter sharing strategy, the relationship between low- and high-order feature combinations is learned from log data, and the click rate prediction model is constructed. Finally, based on the predicted click-through rate, products are recommended to users in sequence and fed back. The area under the curve (AUC) and Logloss of the proposed method are 0.8834 and 0.0253, respectively, on the Criteo dataset, and 0.7836 and 0.0348 on the KDD2012 Cup dataset, respectively. Compared with other newer recommendation methods, the proposed method can achieve better recommendation effect.

Comparing the Performance of 17 Machine Learning Models in Predicting Human Population Growth of Countries

  • Otoom, Mohammad Mahmood
    • International Journal of Computer Science & Network Security
    • /
    • 제21권1호
    • /
    • pp.220-225
    • /
    • 2021
  • Human population growth rate is an important parameter for real-world planning. Common approaches rely upon fixed parameters like human population, mortality rate, fertility rate, which is collected historically to determine the region's population growth rate. Literature does not provide a solution for areas with no historical knowledge. In such areas, machine learning can solve the problem, but a multitude of machine learning algorithm makes it difficult to determine the best approach. Further, the missing feature is a common real-world problem. Thus, it is essential to compare and select the machine learning techniques which provide the best and most robust in the presence of missing features. This study compares 17 machine learning techniques (base learners and ensemble learners) performance in predicting the human population growth rate of the country. Among the 17 machine learning techniques, random forest outperformed all the other techniques both in predictive performance and robustness towards missing features. Thus, the study successfully demonstrates and compares machine learning techniques to predict the human population growth rate in settings where historical data and feature information is not available. Further, the study provides the best machine learning algorithm for performing population growth rate prediction.

The ensemble approach in comparison with the diverse feature selection techniques for estimating NPPs parameters using the different learning algorithms of the feed-forward neural network

  • Moshkbar-Bakhshayesh, Khalil
    • Nuclear Engineering and Technology
    • /
    • 제53권12호
    • /
    • pp.3944-3951
    • /
    • 2021
  • Several reasons such as no free lunch theorem indicate that there is not a universal Feature selection (FS) technique that outperforms other ones. Moreover, some approaches such as using synthetic dataset, in presence of large number of FS techniques, are very tedious and time consuming task. In this study to tackle the issue of dependency of estimation accuracy on the selected FS technique, a methodology based on the heterogeneous ensemble is proposed. The performance of the major learning algorithms of neural network (i.e. the FFNN-BR, the FFNN-LM) in combination with the diverse FS techniques (i.e. the NCA, the F-test, the Kendall's tau, the Pearson, the Spearman, and the Relief) and different combination techniques of the heterogeneous ensemble (i.e. the Min, the Median, the Arithmetic mean, and the Geometric mean) are considered. The target parameters/transients of Bushehr nuclear power plant (BNPP) are examined as the case study. The results show that the Min combination technique gives the more accurate estimation. Therefore, if the number of FS techniques is m and the number of learning algorithms is n, by the heterogeneous ensemble, the search space for acceptable estimation of the target parameters may be reduced from n × m to n × 1. The proposed methodology gives a simple and practical approach for more reliable and more accurate estimation of the target parameters compared to the methods such as the use of synthetic dataset or trial and error methods.

밀링공정의 적응모델링과 공구마모 검출을 위한 신경회로망의 적용 (Adaptive Milling Process Modeling and Nerual Networks Applied to Tool Wear Monitoring)

  • 고태조;조동우
    • 한국정밀공학회지
    • /
    • 제11권1호
    • /
    • pp.138-149
    • /
    • 1994
  • This paper introduces a new monitoring technique which utilizes an adaptive signal processing for feature generation, coupled with a multilayered merual network for pattern recognition. The cutting force signal in face milling operation was modeled by a low order discrete autoregressive model, shere parameters were estimated recursively at each sampling instant using a parameter adaptation algorithm based on an RLS(recursive least square) method with discounted measurements. The influences of the adaptation algorithm parameters as well as some considerations for modeling on the estimation results are discussed. The sensitivity of the extimated model parameters to the tool state(new and worn tool)is presented, and the application of a multilayered neural network to tool state monitoring using the previously generated features is also demonstrated with a high success rate. The methodology turned out to be quite suitable for in-process tool wear monitoring in the sense that the model parameters are effective as tool state features in milling operation and that the classifier successfully maps the sensors data to correct output decision.

  • PDF

Knowledge-driven speech features for detection of Korean-speaking children with autism spectrum disorder

  • Seonwoo Lee;Eun Jung Yeo;Sunhee Kim;Minhwa Chung
    • 말소리와 음성과학
    • /
    • 제15권2호
    • /
    • pp.53-59
    • /
    • 2023
  • Detection of children with autism spectrum disorder (ASD) based on speech has relied on predefined feature sets due to their ease of use and the capabilities of speech analysis. However, clinical impressions may not be adequately captured due to the broad range and the large number of features included. This paper demonstrates that the knowledge-driven speech features (KDSFs) specifically tailored to the speech traits of ASD are more effective and efficient for detecting speech of ASD children from that of children with typical development (TD) than a predefined feature set, extended Geneva Minimalistic Acoustic Standard Parameter Set (eGeMAPS). The KDSFs encompass various speech characteristics related to frequency, voice quality, speech rate, and spectral features, that have been identified as corresponding to certain of their distinctive attributes of them. The speech dataset used for the experiments consists of 63 ASD children and 9 TD children. To alleviate the imbalance in the number of training utterances, a data augmentation technique was applied to TD children's utterances. The support vector machine (SVM) classifier trained with the KDSFs achieved an accuracy of 91.25%, surpassing the 88.08% obtained using the predefined set. This result underscores the importance of incorporating domain knowledge in the development of speech technologies for individuals with disorders.

Meta learning-based open-set identification system for specific emitter identification in non-cooperative scenarios

  • Xie, Cunxiang;Zhang, Limin;Zhong, Zhaogen
    • KSII Transactions on Internet and Information Systems (TIIS)
    • /
    • 제16권5호
    • /
    • pp.1755-1777
    • /
    • 2022
  • The development of wireless communication technology has led to the underutilization of radio spectra. To address this limitation, an intelligent cognitive radio network was developed. Specific emitter identification (SEI) is a key technology in this network. However, in realistic non-cooperative scenarios, the system may detect signal classes beyond those in the training database, and only a few labeled signal samples are available for network training, both of which deteriorate identification performance. To overcome these challenges, a meta-learning-based open-set identification system is proposed for SEI. First, the received signals were pre-processed using bi-spectral analysis and a Radon transform to obtain signal representation vectors, which were then fed into an open-set SEI network. This network consisted of a deep feature extractor and an intrinsic feature memorizer that can detect signals of unknown classes and classify signals of different known classes. The training loss functions and the procedures of the open-set SEI network were then designed for parameter optimization. Considering the few-shot problems of open-set SEI, meta-training loss functions and meta-training procedures that require only a few labeled signal samples were further developed for open-set SEI network training. The experimental results demonstrate that this approach outperforms other state-of-the-art SEI methods in open-set scenarios. In addition, excellent open-set SEI performance was achieved using at least 50 training signal samples, and effective operation in low signal-to-noise ratio (SNR) environments was demonstrated.

New Fuzzy Inference System Using a Kernel-based Method

  • Kim, Jong-Cheol;Won, Sang-Chul;Suga, Yasuo
    • 제어로봇시스템학회:학술대회논문집
    • /
    • 제어로봇시스템학회 2003년도 ICCAS
    • /
    • pp.2393-2398
    • /
    • 2003
  • In this paper, we proposes a new fuzzy inference system for modeling nonlinear systems given input and output data. In the suggested fuzzy inference system, the number of fuzzy rules and parameter values of membership functions are automatically decided by using the kernel-based method. The kernel-based method individually performs linear transformation and kernel mapping. Linear transformation projects input space into linearly transformed input space. Kernel mapping projects linearly transformed input space into high dimensional feature space. The structure of the proposed fuzzy inference system is equal to a Takagi-Sugeno fuzzy model whose input variables are weighted linear combinations of input variables. In addition, the number of fuzzy rules can be reduced under the condition of optimizing a given criterion by adjusting linear transformation matrix and parameter values of kernel functions using the gradient descent method. Once a structure is selected, coefficients in consequent part are determined by the least square method. Simulated result illustrates the effectiveness of the proposed technique.

  • PDF

음성의 피치 파라메터를 사용한 감정 인식 (Emotion Recognition using Pitch Parameters of Speech)

  • 이규현;김원구
    • 한국지능시스템학회논문지
    • /
    • 제25권3호
    • /
    • pp.272-278
    • /
    • 2015
  • 본 논문에서는 음성신호 피치 정보를 이용한 감정 인식 시스템 개발을 목표로 피치 정보로부터 다양한 파라메터 추출방법을 연구하였다. 이를 위하여 다양한 감정이 포함된 한국어 음성 데이터베이스를 이용하여 피치의 통계적인 정보와 수치해석 기법을 사용한 피치 파라메터를 생성하였다. 이러한 파라메터들은 GMM(Gaussian Mixture Model) 기반의 감정 인식 시스템을 구현하여 각 파라메터의 성능을 비교되었다. 또한 순차특징선택 방법을 사용하여 최고의 감정 인식 성능을 나타내는 피치 파라메터들을 선정하였다. 4개의 감정을 구별하는 실험 결과에서 총 56개의 파라메터중에서 15개를 조합하였을 때 63.5%의 인식 성능을 나타내었다. 또한 감정 검출 여부를 나타내는 실험에서는 14개의 파라메터를 조합하였을 때 80.3%의 인식 성능을 나타내었다.

Chirped BPSK 시스템의 항재밍 성능 분석 (Anti-Jamming Performance Analysis of Chirped BPSK System)

  • 유형만;윤성렬;정병기;김용로;유흥균
    • 한국전자파학회논문지
    • /
    • 제12권6호
    • /
    • pp.906-911
    • /
    • 2001
  • 본 논문에서는 비화 통신을 위하여 chirp 방식을 이용한 BPSK 시스템의 LPI(low probability of intercept)와 AJ(anti jamming) 성능을 분석하였다. Chirp 방식은 주파수를 전체 확산대역 내에서 임의적으로 변화시켜 신호의 주기적인 특성을 제거하기 때문에, feature parameter인 chip rate를 검출하는데 용이한 DAM(delay and multiplier)과 반송파 주파수 검출에 용이한 SC(Squaring Circuit)에 대항하여 뛰어난 LPI 특성을 가진다. chirp parameter의 변화에 따른 LPI 특성으로 chirp duration(Tc)이 커질수록 좋은 LPI 성능을 보인다. PBNJ(partial band noise jammer)환경에서, chirp 방식이 이론적인 DSSS(Direct Sequence Spread Spectrum) 방식에 비하여 AJ 성능이 우수함을 시뮬레이션으로 확인하였다. PBNJ와 MTJ(multi-tone jammer)를 비교하였을 때, chirped BPSK 시스템이 동일 JSR(jammer to signal power ratio)에서 MTJ에 더 우수한 AJ 성능이 있다.

  • PDF

선형적 특징을 추출하기 위한 퍼지 후프 방법 (Fuzzy Scheme for Extracting Linear Features)

  • 주문원;최영미
    • 한국멀티미디어학회논문지
    • /
    • 제2권2호
    • /
    • pp.129-136
    • /
    • 1999
  • 특정 이미지에서의 선형적 특정은 이미지를 분석하고 이해하는데 충분한 정보를 제공하기도 한다. 본고에 서는 이미지에서 선형적 특징을 추출하기 위한 신뢰성 있는 방법을 제시한다. 일반적으로 후프 변형 방법은 이러한 선형적 특정을 추출하는 최적의 방법 중의 하나로 인식되어 왔다. 대부분의 후프 기반 방법들은 특정 edge 모델올 선택하고, 인식된 edge 픽셀의 속성을 반영하는 변형식을 활용하여 파라미터 공간에 그 발생빈도 를 기록하는 과정을 거치게 된다. 주로 edge 픽셀의 gradient 크기와 방향이 선형적 특정을 결정하는데 사용되 지만, 본고에서는 그 값틀이 퍼지변수로 활용될 수 있음을 보이고 파라미터 공간에 누적값을 계산하는데 활용한다- 이 방법을 기존의 방법과 비교하기 위하여 에러 측정 방식을 제안하고, 실험을 한 결과, 기존의 방법과 비교하여 우수한 성능을 보인다.

  • PDF