Co-clustering of fuzzy lagged data

Eran Shaham, David Sarne, Boaz Ben-Moshe

نتاج البحث: نشر في مجلةمقالةمراجعة النظراء

2 اقتباسات (Scopus)

ملخص

The paper focuses on mining patterns that are characterized by a fuzzy lagged relationship between the data objects forming them. Such a regulatory mechanism is quite common in real-life settings. It appears in a variety of fields: finance, gene expression, neuroscience, crowds and collective movements are but a limited list of examples. Mining such patterns not only helps in understanding the relationship between objects in the domain, but assists in forecasting their future behavior. For most interesting variants of this problem, finding an optimal fuzzy lagged co-cluster is an NP-complete problem. We present a polynomial time Monte Carlo approximation algorithm for mining fuzzy lagged co-clusters. We prove that for any data matrix, the algorithm mines a fuzzy lagged co-cluster with fixed probability, which encompasses the optimal fuzzy lagged co-cluster by a maximum 2 ratio columns overhead and completely no rows overhead. Moreover, the algorithm handles noise, anti-correlations, missing values and overlapping patterns. The algorithm was extensively evaluated using both artificial and real-life datasets. The results not only corroborate the ability of the algorithm to efficiently mine relevant and accurate fuzzy lagged co-clusters, but also illustrate the importance of including fuzziness in the lagged-pattern model.

اللغة الأصليةالإنجليزيّة
الصفحات (من إلى)217-252
عدد الصفحات36
دوريةKnowledge and Information Systems
مستوى الصوت44
رقم الإصدار1
المعرِّفات الرقمية للأشياء
حالة النشرنُشِر - 17 يوليو 2015

بصمة

أدرس بدقة موضوعات البحث “Co-clustering of fuzzy lagged data'. فهما يشكلان معًا بصمة فريدة.

قم بذكر هذا