hierarchical data clustering model for analyzing passengers’ trip in highways
نویسندگان
چکیده
one of the most important issues in urban planning is developing sustainable public transportation. the basic condition for this purpose is analyzing current condition especially based on data. data mining is a set of new techniques that are beyond statistical data analyzing. clustering techniques is a subset of it that one of it’s techniques used for analyzing passengers’ trip. the result of this research shows relations and similarities in different segments that its usage is from strategic to tactical and operational areas. the approach in transportation is completely novel in the part of trip patterns and a novel process is proposed that can be implemented in highway analysis. also this method can be applied in traffic and vehicle treats that need automatic number plate recognition (anpr) for data gathering. a real case study has been studied here by developed process.
منابع مشابه
HIERARCHICAL DATA CLUSTERING MODEL FOR ANALYZING PASSENGERS’ TRIP IN HIGHWAYS
One of the most important issues in urban planning is developing sustainable public transportation. The basic condition for this purpose is analyzing current condition especially based on data. Data mining is a set of new techniques that are beyond statistical data analyzing. Clustering techniques is a subset of it that one of it’s techniques used for analyzing passengers’ trip. The result of...
متن کاملHierarchical Model-Based Clustering for Relational Data
Relational data mining deals with datasets containing multiple types of objects and relationships that are presented in relational formats, e.g. relational databases that have multiple tables. This paper proposes a propositional hierarchical model-based method for clustering relational data. We first define an object-relational star schema to model composite objects, and present a method of fla...
متن کاملHierarchical Clustering for Complex Data
In this paper we introduce a new tree-structured self-organizing neural network called a dynamical growing self-organizing tree (DGSOT). This DGSOT algorithm constructs a hierarchy from top to bottom by division. At each hierarchical level, the DGSOT optimizes the number of clusters, from which the proper hierarchical structure of the underlying data set can be found. We propose a Klevel up dis...
متن کاملA hierarchical mixture model for clustering three-way data sets
Three-way data sets occur when various attributes aremeasured for a set of observational units in different situations. Examples are genotype by environment by attribute data obtained in a plant experiment, individual by time point by response data in a longitudinal study, and individual by brand by attribute data in a market research survey. Clustering observational units (genotypes/individual...
متن کاملA Hierarchical Probabilistic Model for Co-Clustering High-Dimensional Data
We propose a hierarchical, model-based co-clustering framework for handling high-dimensional datasets. The technique views the dataset as a joint probability distribution over row and column variables. Our approach starts by initially clustering rows in a dataset, where each cluster is characterized by a different probability distribution. Subsequently, the conditional distribution of attribute...
متن کاملA hierarchical model for clustering
We propose a new hierarchical generative model for textual data, where words may be generated by topic speciic distributions at any level in the hierarchy. This model is naturally well-suited to clustering documents in preset or automatically generated hierarchies, as well as categorising new documents in an existing hierarchy. Training algorithms are derived for both cases, and illustrated on ...
متن کاملمنابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
international journal of industrial engineering and productional research-جلد ۲۳، شماره ۴، صفحات ۲۵۳-۲۵۹
میزبانی شده توسط پلتفرم ابری doprax.com
copyright © 2015-2023