A distributed joint sentiment and topic modeling using Spark for big opinion mining

Esmaeil Zahedi, Zahra Baniasadi, M. Saraee
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引用次数: 3

Abstract

Opinion data are produced rapidly by a large and uncontrolled number of opinion holders in different domains (public, business, politic and etc). The volume, variety and velocity of such data requires an opinion mining model to be also adopted with the ever growing and huge volume of opinions and obtaining the probabilistic generative model advantages. In this paper we propose a parallel implementation of joint sentiment and topic (JST) model for simultaneously discovering topics and sentiments from reviews on Spark. Spark is an open source and fast cluster computing framework for large-scale data processing. Here we discuss the implementation of JST on Spark and also discuss the benefit of using Spark while exploring the challenges encountered. We used different Amazon opinion datasets with different volume such as (reviews of electronic devices, book, restaurants, DVD and kitchen). The results present significant speedup and high efficiency on larger scale dataset in our experiments.
基于Spark的大意见挖掘的分布式联合情感和主题建模
意见数据是由不同领域(公共、商业、政治等)的大量不受控制的意见持有者迅速产生的。这类数据的数量、种类和速度要求意见挖掘模型也要随着意见数量的不断增长和巨大而被采用,并获得概率生成模型的优势。在本文中,我们提出了一个并行实现的联合情感和主题(JST)模型,用于同时从Spark上的评论中发现主题和情感。Spark是一个开源的快速集群计算框架,用于大规模数据处理。这里我们将讨论在Spark上实现JST,并讨论使用Spark的好处,同时探索遇到的挑战。我们使用了不同数量的亚马逊意见数据集,例如(电子设备、书籍、餐馆、DVD和厨房的评论)。实验结果表明,在更大规模的数据集上,该算法具有显著的加速和高效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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