期刊文献+
共找到1,141篇文章
< 1 2 58 >
每页显示 20 50 100
Backward Support Computation Method for Positive and Negative Frequent Itemset Mining
1
作者 Mrinmoy Biswas Akash Indrani Mandal Md. Selim Al Mamun 《Journal of Data Analysis and Information Processing》 2023年第1期37-48,共12页
Association rules mining is a major data mining field that leads to discovery of associations and correlations among items in today’s big data environment. The conventional association rule mining focuses mainly on p... Association rules mining is a major data mining field that leads to discovery of associations and correlations among items in today’s big data environment. The conventional association rule mining focuses mainly on positive itemsets generated from frequently occurring itemsets (PFIS). However, there has been a significant study focused on infrequent itemsets with utilization of negative association rules to mine interesting frequent itemsets (NFIS) from transactions. In this work, we propose an efficient backward calculating negative frequent itemset algorithm namely EBC-NFIS for computing backward supports that can extract both positive and negative frequent itemsets synchronously from dataset. EBC-NFIS algorithm is based on popular e-NFIS algorithm that computes supports of negative itemsets from the supports of positive itemsets. The proposed algorithm makes use of previously computed supports from memory to minimize the computation time. In addition, association rules, i.e. positive and negative association rules (PNARs) are generated from discovered frequent itemsets using EBC-NFIS algorithm. The efficiency of the proposed algorithm is verified by several experiments and comparing results with e-NFIS algorithm. The experimental results confirm that the proposed algorithm successfully discovers NFIS and PNARs and runs significantly faster than conventional e-NFIS algorithm. 展开更多
关键词 Data Mining Positive frequent itemset Negative frequent itemset Association Rule Backward Support
在线阅读 下载PDF
Double-layer Bayesian Classifier Ensembles Based on Frequent Itemsets 被引量:3
2
作者 Wei-Guo Yi Jing Duan Ming-Yu Lu 《International Journal of Automation and computing》 EI 2012年第2期215-220,共6页
Numerous models have been proposed to reduce the classification error of Naive Bayes by weakening its attribute independence assumption and some have demonstrated remarkable error performance. Considering that ensembl... Numerous models have been proposed to reduce the classification error of Naive Bayes by weakening its attribute independence assumption and some have demonstrated remarkable error performance. Considering that ensemble learning is an effective method of reducing the classifmation error of the classifier, this paper proposes a double-layer Bayesian classifier ensembles (DLBCE) algorithm based on frequent itemsets. DLBCE constructs a double-layer Bayesian classifier (DLBC) for each frequent itemset the new instance contained and finally ensembles all the classifiers by assigning different weight to different classifier according to the conditional mutual information. The experimental results show that the proposed algorithm outperforms other outstanding algorithms. 展开更多
关键词 Double-layer Bayesian CLASSIFIER frequent itemsets conditional mutual information support.
在线阅读 下载PDF
A novel algorithm for frequent itemset mining in data warehouses 被引量:2
3
作者 徐利军 谢康林 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2006年第2期216-224,共9页
Current technology for frequent itemset mining mostly applies to the data stored in a single transaction database. This paper presents a novel algorithm MultiClose for frequent itemset mining in data warehouses. Multi... Current technology for frequent itemset mining mostly applies to the data stored in a single transaction database. This paper presents a novel algorithm MultiClose for frequent itemset mining in data warehouses. MultiClose respectively computes the results in single dimension tables and merges the results with a very efficient approach. Close itemsets technique is used to improve the performance of the algorithm. The authors propose an efficient implementation for star schemas in which their al- gorithm outperforms state-of-the-art single-table algorithms. 展开更多
关键词 frequent itemset Close itemset Star schema Dimension table Fact table
在线阅读 下载PDF
Frequent Itemset Mining of User’s Multi-Attribute under Local Differential Privacy 被引量:2
4
作者 Haijiang Liu Lianwei Cui +1 位作者 Xuebin Ma Celimuge Wu 《Computers, Materials & Continua》 SCIE EI 2020年第10期369-385,共17页
Frequent itemset mining is an essential problem in data mining and plays a key role in many data mining applications.However,users’personal privacy will be leaked in the mining process.In recent years,application of ... Frequent itemset mining is an essential problem in data mining and plays a key role in many data mining applications.However,users’personal privacy will be leaked in the mining process.In recent years,application of local differential privacy protection models to mine frequent itemsets is a relatively reliable and secure protection method.Local differential privacy means that users first perturb the original data and then send these data to the aggregator,preventing the aggregator from revealing the user’s private information.We propose a novel framework that implements frequent itemset mining under local differential privacy and is applicable to user’s multi-attribute.The main technique has bitmap encoding for converting the user’s original data into a binary string.It also includes how to choose the best perturbation algorithm for varying user attributes,and uses the frequent pattern tree(FP-tree)algorithm to mine frequent itemsets.Finally,we incorporate the threshold random response(TRR)algorithm in the framework and compare it with the existing algorithms,and demonstrate that the TRR algorithm has higher accuracy for mining frequent itemsets. 展开更多
关键词 Local differential privacy frequent itemset mining user’s multi-attribute
在线阅读 下载PDF
FICW: Frequent Itemset Based Text Clustering with Window Constraint
5
作者 ZHOU Chong LU Yansheng ZOU Lei HU Rong 《Wuhan University Journal of Natural Sciences》 CAS 2006年第5期1345-1351,共7页
Most of the existing text clustering algorithms overlook the fact that one document is a word sequence with semantic information. There is some important semantic information existed in the positions of words in the s... Most of the existing text clustering algorithms overlook the fact that one document is a word sequence with semantic information. There is some important semantic information existed in the positions of words in the sequence. In this paper, a novel method named Frequent Itemset-based Clustering with Window (FICW) was proposed, which makes use of the semantic information for text clustering with a window constraint. The experimental results obtained from tests on three (hypertext) text sets show that FICW outperforms the method compared in both clustering accuracy and efficiency. 展开更多
关键词 text clustering frequent itemsets search engine
在线阅读 下载PDF
Mining φ-Frequent Itemset Using FP-Tree
6
作者 李天瑞 《Journal of Modern Transportation》 2001年第1期67-74,共8页
The problem of association rule mining has gained considerable prominence in the data mining community for its use as an important tool of knowledge discovery from large scale databases. And there has been a spurt of... The problem of association rule mining has gained considerable prominence in the data mining community for its use as an important tool of knowledge discovery from large scale databases. And there has been a spurt of research activities around this problem. However, traditional association rule mining may often derive many rules in which people are uninterested. This paper reports a generalization of association rule mining called φ association rule mining. It allows people to have different interests on different itemsets that arethe need of real application. Also, it can help to derive interesting rules and substantially reduce the amount of rules. An algorithm based on FP tree for mining φ frequent itemset is presented. It is shown by experiments that the proposed methodis efficient and scalable over large databases. 展开更多
关键词 data processing DATABASES φ association rule mining φ frequent itemset FP tree data mining
在线阅读 下载PDF
A Depth-first Algorithm of Finding All Association Rules Generated by a Frequent Itemset
7
作者 武坤 姜保庆 魏庆 《Journal of Donghua University(English Edition)》 EI CAS 2006年第6期1-4,9,共5页
The classical algorithm of finding association rules generated by a frequent itemset has to generate all non-empty subsets of the frequent itemset as candidate set of consequents. Xiongfei Li aimed at this and propose... The classical algorithm of finding association rules generated by a frequent itemset has to generate all non-empty subsets of the frequent itemset as candidate set of consequents. Xiongfei Li aimed at this and proposed an improved algorithm. The algorithm finds all consequents layer by layer, so it is breadth-first. In this paper, we propose a new algorithm Generate Rules by using Set-Enumeration Tree (GRSET) which uses the structure of Set-Enumeration Tree and depth-first method to find all consequents of the association rules one by one and get all association rules correspond to the consequents. Experiments show GRSET algorithm to be practicable and efficient. 展开更多
关键词 association rule frequent itemset breath-first depth-first consequent.
在线阅读 下载PDF
FPGA-Based Stream Processing for Frequent Itemset Mining with Incremental Multiple Hashes
8
作者 Kasho Yamamoto Masayuki Ikebe +1 位作者 Tetsuya Asai Masato Motomura 《Circuits and Systems》 2016年第10期3299-3309,共11页
With the advent of the IoT era, the amount of real-time data that is processed in data centers has increased explosively. As a result, stream mining, extracting useful knowledge from a huge amount of data in real time... With the advent of the IoT era, the amount of real-time data that is processed in data centers has increased explosively. As a result, stream mining, extracting useful knowledge from a huge amount of data in real time, is attracting more and more attention. It is said, however, that real- time stream processing will become more difficult in the near future, because the performance of processing applications continues to increase at a rate of 10% - 15% each year, while the amount of data to be processed is increasing exponentially. In this study, we focused on identifying a promising stream mining algorithm, specifically a Frequent Itemset Mining (FIsM) algorithm, then we improved its performance using an FPGA. FIsM algorithms are important and are basic data- mining techniques used to discover association rules from transactional databases. We improved on an approximate FIsM algorithm proposed recently so that it would fit onto hardware architecture efficiently. We then ran experiments on an FPGA. As a result, we have been able to achieve a speed 400% faster than the original algorithm implemented on a CPU. Moreover, our FPGA prototype showed a 20 times speed improvement compared to the CPU version. 展开更多
关键词 Data Mining frequent itemset Mining FPGA Stream Processing
在线阅读 下载PDF
An efficient and resilience linear prefix approach for mining maximal frequent itemset using clustering
9
作者 M.Sinthuja S.Pravinthraja +3 位作者 B K Dhanalakshmi H L Gururaj Vinayakumar Ravi G Jyothish Lal 《Journal of Safety Science and Resilience》 2025年第1期93-104,共12页
The numerous volumes of data generated every day necessitate the deployment of new technologies capable of dealing with massive amounts of data efficiently.This is the case with Association Rules,a tool for unsupervis... The numerous volumes of data generated every day necessitate the deployment of new technologies capable of dealing with massive amounts of data efficiently.This is the case with Association Rules,a tool for unsupervised data mining that extracts information in the form of IF-THEN patterns.Although various approaches for extracting frequent itemset(prior step before mining association rules)in extremely large databases have been presented,the high computational cost and shortage of memory remain key issues to be addressed while processing enormous data.The objective of this research is to discover frequent itemset by using clustering for preprocessing and adopting the linear prefix tree algorithm for mining the maximal frequent itemset.The performance of the proposed CL-LP-MAX-tree was evaluated by comparing it with the existing FP-max algorithm.Experimentation was performed with the three different standard datasets to record evidence to prove that the proposed CL-LP-MAX-tree algorithm outperform the existing FP-max algorithm in terms of runtime and memory consumption. 展开更多
关键词 CLUSTERING Data mining frequent itemset mining Linear prefix tree Maximal frequent itemset mining
原文传递
New algorithm of mining frequent closed itemsets
10
作者 张亮 任永功 付玉 《Journal of Southeast University(English Edition)》 EI CAS 2008年第3期335-338,共4页
A new algorithm based on an FC-tree (frequent closed pattern tree) and a max-FCIA (maximal frequent closed itemsets algorithm) is presented, which is used to mine the frequent closed itemsets for solving memory an... A new algorithm based on an FC-tree (frequent closed pattern tree) and a max-FCIA (maximal frequent closed itemsets algorithm) is presented, which is used to mine the frequent closed itemsets for solving memory and time consuming problems. This algorithm maps the transaction database by using a Hash table,gets the support of all frequent itemsets through operating the Hash table and forms a lexicographic subset tree including the frequent itemsets.Efficient pruning methods are used to get the FC-tree including all the minimum frequent closed itemsets through processing the lexicographic subset tree.Finally,frequent closed itemsets are generated from minimum frequent closed itemsets.The experimental results show that the mapping transaction database is introduced in the algorithm to reduce time consumption and to improve the efficiency of the program.Furthermore,the effective pruning strategy restrains the number of candidates,which saves space.The results show that the algorithm is effective. 展开更多
关键词 frequent itemsets frequent closed itemsets minimum frequent closed itemsets maximal frequent closed itemsets frequent closed pattern tree
在线阅读 下载PDF
Parallel Incremental Frequent Itemset Mining for Large Data 被引量:5
11
作者 Yu-Geng Song Hui-Min Cui Xiao-Bing Feng 《Journal of Computer Science & Technology》 SCIE EI CSCD 2017年第2期368-385,共18页
Frequent itemset mining (FIM) is a popular data mining issue adopted in many fields, such as commodity recommendation in the retail industry, log analysis in web searching, and query recommendation (or related sea... Frequent itemset mining (FIM) is a popular data mining issue adopted in many fields, such as commodity recommendation in the retail industry, log analysis in web searching, and query recommendation (or related search). A large number of FIM algorithms have been proposed to obtain better performance, including parallelized algorithms for processing large data volumes. Besides, incremental FIM algorithms are also proposed to deal with incremental database updates. However, most of these incremental algorithms have low parallelism, causing low efficiency on huge databases. This paper presents two parallel incremental FIM algorithms called IncMiningPFP and IncBuildingPFP, implemented on the MapReduce framework. IncMiningPFP preserves the FP-tree mining results of the original pass, and utilizes them for incremental calculations. In particular, we propose a method to generate a partial FP-tree in the incremental pass, in order to avoid unnecessary mining work. Further, some of the incremental parallel tasks can be omitted when the inserted transactions include fewer items. IncbuildingPFP preserves the CanTrees built in the original pass, and then adds new transactions to them during the incremental passes. Our experimental results show that IncMiningPFP can achieve significant speedup over PFP (Parallel FPGrowth) and a sequential incremental algorithm (CanTree) in most cases of incremental input database, and in other cases IncBuildingPFP can achieve it. 展开更多
关键词 incremental parallel FPGrowth data mining frequent itemset mining MAPREDUCE
原文传递
Effect of Count Estimation in Finding Frequent Itemsets over Online Transactional Data Streams 被引量:2
12
作者 JoongHyukChang WonSukLee 《Journal of Computer Science & Technology》 SCIE EI CSCD 2005年第1期63-69,共7页
A data stream is a massive unbounded sequence of data elements continuouslygenerated at a rapid rate. Due to this reason, most algorithms for data streams sacrifice thecorrectness of their results for fast processing ... A data stream is a massive unbounded sequence of data elements continuouslygenerated at a rapid rate. Due to this reason, most algorithms for data streams sacrifice thecorrectness of their results for fast processing time. The processing time is greatly influenced bythe amount of information that should be maintained. This issue becomes more serious in findingfrequent itemsets or frequency counting over an online transactional data stream since there can bea large number of itemsets to be monitored. We have proposed a method called the estDec method forfinding frequent itemsets over an online data stream. In order to reduce the number of monitoreditemsets in this method, monitoring the count of an itemset is delayed until its support is largeenough to become a frequent itemset in the near future. For this purpose, the count of an itemsetshould be estimated. Consequently, how to estimate the count of an itemset is a critical issue inminimizing memory usage as well as processing time. In this paper, the effects of various countestimation methods for finding frequent itemsets are analyzed in terms of mining accuracy, memoryusage and processing time. 展开更多
关键词 count estimation frequent itemsets transactional data streams
原文传递
Mining Frequent Itemsets in Correlated Uncertain Databases 被引量:1
13
作者 童咏昕 陈雷 余洁莹 《Journal of Computer Science & Technology》 SCIE EI CSCD 2015年第4期696-712,共17页
Recently, with the growing popularity of Internet of Things (IoT) and pervasive computing, a large amount of uncertain data, e.g., RFID data, sensor data, real-time video data, has been collected. As one of the most... Recently, with the growing popularity of Internet of Things (IoT) and pervasive computing, a large amount of uncertain data, e.g., RFID data, sensor data, real-time video data, has been collected. As one of the most fundamental issues of uncertain data mining, uncertain frequent pattern mining has attracted much attention in database and data mining communities. Although there have been some solutions for uncertain frequent pattern mining, most of them assume that the data is independent, which is not true in most real-world scenarios. Therefore, current methods that are based on the independent assumption may generate inaccurate results for correlated uncertain data. In this paper, we focus on the problem of mining frequent itemsets over correlated uncertain data, where correlation can exist in any pair of uncertain data objects (transactions). We propose a novel probabilistic model, called Correlated Frequent Probability model (CFP model) to represent the probability distribution of support in a given correlated uncertain dataset. Based on the distribution of support derived from the CFP model, we observe that some probabilistic frequent itemsets are only frequent in several transactions with high positive correlation. In particular, the itemsets, which are global probabilistic frequent, have more significance in eliminating the influence of the existing noise and correlation in data. In order to reduce redundant frequent itemsets, we further propose a new type of patterns, called global probabilistic frequent itemsets, to identify itemsets that are always frequent in each group of transactions if the whole correlated uncertain database is divided into disjoint groups based on their correlation. To speed up the mining process, we also design a dynamic programming solution, as well as two pruning and bounding techniques. Extensive experiments on both real and synthetic datasets verify the effectiveness and e?ciency of the proposed model and algorithms. 展开更多
关键词 CORRELATION uncertain data probabilistic frequent itemset
原文传递
Hadamard Encoding Based Frequent Itemset Mining under Local Differential Privacy 被引量:1
14
作者 赵丹 赵素云 +3 位作者 陈红 刘睿瑄 李翠平 张晓莹 《Journal of Computer Science & Technology》 SCIE EI CSCD 2023年第6期1403-1422,共20页
Local differential privacy(LDP)approaches to collecting sensitive information for frequent itemset mining(FIM)can reliably guarantee privacy.Most current approaches to FIM under LDP add"padding and sampling"... Local differential privacy(LDP)approaches to collecting sensitive information for frequent itemset mining(FIM)can reliably guarantee privacy.Most current approaches to FIM under LDP add"padding and sampling"steps to obtain frequent itemsets and their frequencies because each user transaction represents a set of items.The current state-of-the-art approach,namely set-value itemset mining(SVSM),must balance variance and bias to achieve accurate results.Thus,an unbiased FIM approach with lower variance is highly promising.To narrow this gap,we propose an Item-Level LDP frequency oracle approach,named the Integrated-with-Hadamard-Transform-Based Frequency Oracle(IHFO).For the first time,Hadamard encoding is introduced to a set of values to encode all items into a fixed vector,and perturbation can be subsequently applied to the vector.An FIM approach,called optimized united itemset mining(O-UISM),is pro-posed to combine the padding-and-sampling-based frequency oracle(PSFO)and the IHFO into a framework for acquiring accurate frequent itemsets with their frequencies.Finally,we theoretically and experimentally demonstrate that O-UISM significantly outperforms the extant approaches in finding frequent itemsets and estimating their frequencies under the same privacy guarantee. 展开更多
关键词 local differential privacy frequent itemset mining frequency oracle
原文传递
Text Classification Using Sentential Frequent Itemsets
15
作者 刘石竹 胡和平 《Journal of Computer Science & Technology》 SCIE EI CSCD 2007年第2期334-336,F0003,共4页
Text classification techniques mostly rely on single term analysis of the document data set, while more concepts, especially the specific ones, are usually conveyed by set of terms. To achieve more accurate text class... Text classification techniques mostly rely on single term analysis of the document data set, while more concepts, especially the specific ones, are usually conveyed by set of terms. To achieve more accurate text classifier, more informative feature including frequent co-occurring words in the same sentence and their weights are particularly important in such scenarios. In this paper, we propose a novel approach using sentential frequent itemset, a concept comes from association rule mining, for text classification, which views a sentence rather than a document as a transaction, and uses a variable precision rough set based method to evaluate each sentential frequent itemset's contribution to the classification. Experiments over the Reuters and newsgroup corpus are carried out, which validate the practicability of the proposed system. 展开更多
关键词 text classification sentential frequent itemsets variable precision rough set model
原文传递
Mining Frequent Closed Itemsets in Large High Dimensional Data
16
作者 余光柱 曾宪辉 邵世煌 《Journal of Donghua University(English Edition)》 EI CAS 2008年第4期416-424,共9页
Large high-dimensional data have posed great challenges to existing algorithms for frequent itemsets mining.To solve the problem,a hybrid method,consisting of a novel row enumeration algorithm and a column enumeration... Large high-dimensional data have posed great challenges to existing algorithms for frequent itemsets mining.To solve the problem,a hybrid method,consisting of a novel row enumeration algorithm and a column enumeration algorithm,is proposed.The intention of the hybrid method is to decompose the mining task into two subtasks and then choose appropriate algorithms to solve them respectively.The novel algorithm,i.e.,Inter-transaction is based on the characteristic that there are few common items between or among long transactions.In addition,an optimization technique is adopted to improve the performance of the intersection of bit-vectors.Experiments on synthetic data show that our method achieves high performance in large high-dimensional data. 展开更多
关键词 frequent closed itemsets large highdimensional data row enumeration column enumeration hybrid method
在线阅读 下载PDF
CFSBC: Clustering in High-Dimensional Space Based on Closed Frequent Item Set
17
作者 NIWei-wei SUNZhi-hui 《Wuhan University Journal of Natural Sciences》 EI CAS 2004年第5期590-594,共5页
Clustering in high-dimensional space is an important domain in data mining. It is the process of discovering groups in a high-dimensional dataset, in such way, that the similarity between the elements of the same clus... Clustering in high-dimensional space is an important domain in data mining. It is the process of discovering groups in a high-dimensional dataset, in such way, that the similarity between the elements of the same cluster is maximum and between different clusters is minimal. Many clustering algorithms are not applicable to high-dimensional space for its sparseness and decline properties. Dimensionality reduction is an effective method to solve this problem. The paper proposes a novel clustering algorithm CFSBC based on closed frequent itemsets derived from association rule mining, which can get the clustering attributes with high efficiency. The algorithm has several advantages. First, it deals effectively with the problem of dimensionality reduction. Second, it is applicable to different kinds of attributes. Third, it is suitable for very large data sets. Experiment shows that the proposed algorithm is effective and efficient. Key words clustering - closed frequent itemsets - association rule - clustering attributes CLC number TP 311 Foundation item: Supported by the National Natural Science Foundation of China (70371015)Biography: NI Wei-wei (1979-), male, Ph. D candidate, research direction: data mining and knowledge discovery. 展开更多
关键词 CLUSTERING closed frequent itemsets association rule clustering attributes
在线阅读 下载PDF
基于频繁模式树和深度学习的频繁项集挖掘算法 被引量:1
18
作者 李洋 李华 《黑龙江工业学院学报(综合版)》 2025年第1期94-98,共5页
随着数据量的急剧增长,从海量数据中挖掘有价值的信息变得尤为重要。频繁项集挖掘作为数据挖掘的一个关键领域,旨在识别数据集中频繁出现的项集,这些项集能够揭示数据间的内在联系,并为后续的高级分析提供基础。然而,传统的频繁项集挖... 随着数据量的急剧增长,从海量数据中挖掘有价值的信息变得尤为重要。频繁项集挖掘作为数据挖掘的一个关键领域,旨在识别数据集中频繁出现的项集,这些项集能够揭示数据间的内在联系,并为后续的高级分析提供基础。然而,传统的频繁项集挖掘算法在处理大规模数据集时面临准确性和效率的挑战。为了解决这些问题,本研究提出频繁模式树和深度学习的新型频繁项集挖掘算法。该算法首先利用深度置信网络提取数据的高级特征,然后基于这些特征构建频繁模式树,以高效挖掘频繁项集。实验结果表明,该算法在查全率和查准率方面均表现优异,查全率高达97.56%,查准率高达95.49%,显示出其在实际应用中的高准确性和广泛适用性。 展开更多
关键词 频繁模式树 深度学习 频繁项集 数据挖掘 挖掘算法
在线阅读 下载PDF
基于结合型制图方法的土壤类型推理研究 被引量:2
19
作者 李坤 黄魏 +2 位作者 傅佩红 陈宇昊 王子影 《土壤学报》 北大核心 2025年第2期348-361,共14页
通过数字土壤制图获取更高精度的土壤类型空间分布,对于人们合理利用土地资源具有重要意义。本研究基于实地采样点根据母质类型筛选环境因子,并使用随机森林,土壤景观推理模型方法(Soil-land Inference Model,So LIM)、K邻近算法(K-Near... 通过数字土壤制图获取更高精度的土壤类型空间分布,对于人们合理利用土地资源具有重要意义。本研究基于实地采样点根据母质类型筛选环境因子,并使用随机森林,土壤景观推理模型方法(Soil-land Inference Model,So LIM)、K邻近算法(K-Nearest Neighbor,KNN)等三种不同制图方法分别分区建模,得到制图结果后合并形成全域土壤类型空间分布图,继而,使用FP-Growth算法挖掘环境因子内部关联关系(频繁项集),分别将其与上述三种制图结果结合,再次推理土壤类型空间分布。制图结果显示:(1)按母质类型分开制图的效果和精度均较母质一起制图时好,且土壤类型空间分布的推理也更加合理。(2)随机森林与频繁项集结合制图在本研究中精度最高,为70.73%,且与另外两种结合方法推理的土壤类型空间分布也有一定的相似性,通过对比分析能够确定研究区土种类型的空间分布。(3)与频繁项集结合后,三种方法的制图精度和Kappa系数均有提升,提升最多的为KNN方法(分别提升9.76%,11.70%),最少的为随机森林方法(分别提升4.88%,5.85%),验证了本文设计结合方法的有效性。本研究主要进行了两方面探究,一方面探究了母质对环境因子筛选的影响,为数字土壤制图的因子筛选提供参考;另一方面通过将频繁项集与不同制图方法相结合为数字土壤制图提供了新的方法和思路,同时也为关联关系的信息化应用提供了参考。 展开更多
关键词 环境因子 母质 机器学习 频繁项集 数字土壤制图
在线阅读 下载PDF
一种自适应的数据流近期加权频繁项集挖掘
20
作者 贺慧爱 荀亚玲 +1 位作者 王林青 杨海峰 《太原科技大学学报》 2025年第2期152-159,共8页
针对传统频繁项集挖掘仅考虑项目频率导致的信息损失,以及流式数据所包含知识将随时间推移发生变化的问题,提出一种高效的近期加权频繁项集挖掘算法RWFIM-Neg.RWFIM-Neg引入时间衰减因子,通过设置相似性阈值自适应地调整不同时域数据流... 针对传统频繁项集挖掘仅考虑项目频率导致的信息损失,以及流式数据所包含知识将随时间推移发生变化的问题,提出一种高效的近期加权频繁项集挖掘算法RWFIM-Neg.RWFIM-Neg引入时间衰减因子,通过设置相似性阈值自适应地调整不同时域数据流的衰减程度;在挖掘过程中,通过引入一种更高效的数据结构NegNodeset避免了复杂的建树过程和繁琐的支持度计算,其采用前缀树中的节点集Nodesets,利用位运算来迅速得到没有父子节点关系的负节点集NegNodesets,提高了连接效率,使得其支持度计算的复杂度降低到O(n);同时采用超集等价和父子等价修剪策略,有效地减少了最近加权频繁模式的搜索空间。实验结果表明,其性能优于最新的RWFIM-M算法和传统的WFI挖掘算法。 展开更多
关键词 相似度 时间衰减因子 近期加权频繁项集 位图树 数据流
在线阅读 下载PDF
上一页 1 2 58 下一页 到第
使用帮助 返回顶部