SlideShare a Scribd company logo
1 of 25
Amazon Product Review
Data Analysis
GROUP 2
Jaydeep J Chopde
Maitri S Shah
Monika Mishra
Pankti N Parikh
Rakshith Chandan Babu
Under the guidance of
Dr. Jongwook Woo
Introduction
 With the quick growth of internet and it’s
increasing accessibility, e-commerce has developed
rapidly in the last few years.
 With the introduction of e-commerce shops, we
can buy anything with a click of the mouse.
 The biggest disadvantage of e-commerce is that
one is not able to see and feel the product.
 Since consumers are not able to feel and touch the
product, most of the the customers, on any online
shopping sites, make purchasing decisions based
on reviews and ratings.
 And so it’s very important for business to know the
various shopping patterns and customer’s
sentiments based upon the reviews and ratings.
ABOUT THE
DATASET
 Dataset : - https://s3.amazonaws.com/amazon-
reviews-pds/tsv/index.txt
 Products reviewed between 2005 and 2015 are
analyzed
 Countries considered : US, UK, FR , DE
 File Size : 5.26 GB
 Number of Files : 7
 File Format : TSV (Tab Separated Values),
CSV (Comma Separated Values)
 Total no. of product reviews : 9.57 million
CLUSTER DETAILS
Cluster Version : Oracle Big Data Compute Edition
No. of Nodes : 5
Memory Size : 150 GB
CPU : 20 vCPU
HDFS Capacity : 147 GB
Storage : 678 GB
BIG DATA
 Big data is a term used to refer to the study
and applications of data sets that are too
complex for traditional data-processing
application software to adequately deal with.
 It works on the principle that the more you
know about anything the more reliably you
can gain new insights and make predictions
about it’s future. By comparing more data
points, relationships begin to emerge and
these relationships enable us to learn and
make smarter decisions.
HADOOP
Hadoop is a framework to process Big Data. It is a
framework that enables you to store and process large
data sets in parallel and distributed fashion.
Hadoop Core Components:
Hadoop Distributed File System (HDFS) takes care of
storage part of Hadoop architecture.
MapReduce is a processing model and software
framework for writing applications which can run on
Hadoop. These programs of MapReduce are capable of
processing Big Data in parallel on large clusters of
computational nodes.
HIVE
 Hive is a data warehouse infrastructure tool to process structured data in Hadoop.
 It resides on top of Hadoop to summarize Big Data, and makes querying and
analyzing easy.
 Initially Hive was developed by Facebook, later the Apache Software Foundation
took it up and developed it further as an open source under the name Apache Hive.
 It stores schema in a database and processed data into HDFS.
 It provides SQL type language for querying called HiveQL.
 It is familiar, fast, scalable, and extensible.
FLOWCHART
Download
Dataset
Upload data
into HDFS
Trigger Hive
Queries
Output
Visualizations
Find Insights
VISUALIZATIONS
Total review count by country
Count of reviews by country
Least Rated Product
• Only Product with at least 50 review were
considered
• The least rated product is at 1.48
Common Words used in comments
Bigrams Trigram
• The most common phrase is “waste of”.
Inights of the Sentiment Analysis
Problems
Misleading Description
No free choice for streaming.
No Support for local channels
Solution
Proper description.
Addition streaming service.
Support for local channels.
Distribution of overall ratings of amazon products
Number of reviews given by unique users over 10 years
Review count by year and month
Review count for product category
Popular product based on average rating and review count
Rating based geospatial representation for product category-
baby
INSIGHTS
 Books is the most popular category based on ratings and
reviews.
 Around 3,162 reviews(maximum) were written by one user in the
span of 10 years.
 The review count has gradually increased over the years.
 The review count is maximum in the holiday months –
November, December, January.
 64.57% people gave the maximum rating 5 to the products.
 Video DVD received the maximum number of reviews.
 The consumer sentiments is mostly positive in US, UK and
Germany country.
 Digital products have received more reviews than the non-
digital products.
GITHUB LINK
https://github.com/monika2403/mmishra2
Datsentia Source URLs
 US : https://s3.amazonaws.com/amazon-reviews-
pds/tsv/amazon_reviews_multilingual_US_v1_00.tsv.gz
 DE : https://s3.amazonaws.com/amazon-reviews-
pds/tsv/amazon_reviews_multilingual_DE_v1_00.tsv.gz
 UK : https://s3.amazonaws.com/amazon-reviews-
pds/tsv/amazon_reviews_multilingual_UK_v1_00.tsv.gz
 FR : https://s3.amazonaws.com/amazon-reviews-
pds/tsv/amazon_reviews_multilingual_FR_v1_00.tsv.gz
 US Dictionary : https://s3.amazonaws.com/hipicdatasets/dictionary.tsv
 German Dictionary : http://www.ulliwaltinger.de/ment/GermanPolarityClues-
2012.zip
 French Dictionary : https://advance.lirmm.fr/FEEL.csv
REFERENCES
https://aesthetecurator.com
https://en.wikipedia.org/wiki/Big_data
https://www.bernardmarr.com/
https://github.com/
https://s3.amazonaws.com/
http://www.ulliwaltinger.de/sentiment/
https://www.dropbox.com/home/cis4560_5200Fall2018/ter
mProjectsGuidelines
Amazon Product ReviewData Analysis

More Related Content

What's hot

Amazon India ppt
Amazon India pptAmazon India ppt
Amazon India pptIkram Vora
 
E commerce case study
E commerce case studyE commerce case study
E commerce case studyAmlan Datta
 
Revealing Design Treasures From The Amazon
Revealing Design Treasures From The AmazonRevealing Design Treasures From The Amazon
Revealing Design Treasures From The AmazonJared Spool
 
AMAZON - case study - growth of e-commerce
AMAZON - case study - growth of e-commerceAMAZON - case study - growth of e-commerce
AMAZON - case study - growth of e-commerceSiddhi Sharma
 
[Assignment 7.1] Market reshearch - Audit vs panel
[Assignment 7.1] Market reshearch - Audit vs panel[Assignment 7.1] Market reshearch - Audit vs panel
[Assignment 7.1] Market reshearch - Audit vs panelHung Van
 
linkage between sensory and neuro marketing
linkage between sensory and neuro marketinglinkage between sensory and neuro marketing
linkage between sensory and neuro marketingPriya Dharshini
 
Company presentation - Amazon
Company presentation - AmazonCompany presentation - Amazon
Company presentation - AmazonIndushekar Reddy
 
Amazon Case Study 2021
Amazon Case Study 2021Amazon Case Study 2021
Amazon Case Study 2021DevAdnani
 
An analysis of e grocery
An analysis of e groceryAn analysis of e grocery
An analysis of e groceryKen Leaver
 
Online to offline (O2O) Commerce
Online to offline (O2O) CommerceOnline to offline (O2O) Commerce
Online to offline (O2O) CommerceRavikeerthi Rao
 
Presentation mkgt 476
Presentation   mkgt 476Presentation   mkgt 476
Presentation mkgt 476Edwin Xiong
 
Amazon Web Services - Value Chain Analysis
Amazon Web Services - Value Chain AnalysisAmazon Web Services - Value Chain Analysis
Amazon Web Services - Value Chain AnalysisPavan Gujar
 

What's hot (20)

Amazon India ppt
Amazon India pptAmazon India ppt
Amazon India ppt
 
Final Presentation
Final PresentationFinal Presentation
Final Presentation
 
Amazon future
Amazon futureAmazon future
Amazon future
 
Amazon ppt
Amazon pptAmazon ppt
Amazon ppt
 
E commerce case study
E commerce case studyE commerce case study
E commerce case study
 
Revealing Design Treasures From The Amazon
Revealing Design Treasures From The AmazonRevealing Design Treasures From The Amazon
Revealing Design Treasures From The Amazon
 
AMAZON - case study - growth of e-commerce
AMAZON - case study - growth of e-commerceAMAZON - case study - growth of e-commerce
AMAZON - case study - growth of e-commerce
 
[Assignment 7.1] Market reshearch - Audit vs panel
[Assignment 7.1] Market reshearch - Audit vs panel[Assignment 7.1] Market reshearch - Audit vs panel
[Assignment 7.1] Market reshearch - Audit vs panel
 
Amazon strategy
Amazon strategyAmazon strategy
Amazon strategy
 
linkage between sensory and neuro marketing
linkage between sensory and neuro marketinglinkage between sensory and neuro marketing
linkage between sensory and neuro marketing
 
Company presentation - Amazon
Company presentation - AmazonCompany presentation - Amazon
Company presentation - Amazon
 
Amazon Case Study 2021
Amazon Case Study 2021Amazon Case Study 2021
Amazon Case Study 2021
 
Neuro Marketing
Neuro Marketing Neuro Marketing
Neuro Marketing
 
Amazn go
Amazn goAmazn go
Amazn go
 
Presentation on Amazon
Presentation on AmazonPresentation on Amazon
Presentation on Amazon
 
An analysis of e grocery
An analysis of e groceryAn analysis of e grocery
An analysis of e grocery
 
Online to offline (O2O) Commerce
Online to offline (O2O) CommerceOnline to offline (O2O) Commerce
Online to offline (O2O) Commerce
 
Target Case Study
Target Case StudyTarget Case Study
Target Case Study
 
Presentation mkgt 476
Presentation   mkgt 476Presentation   mkgt 476
Presentation mkgt 476
 
Amazon Web Services - Value Chain Analysis
Amazon Web Services - Value Chain AnalysisAmazon Web Services - Value Chain Analysis
Amazon Web Services - Value Chain Analysis
 

Similar to Amazon Product Review Data Analysis

Web Marketing Week4
Web Marketing Week4Web Marketing Week4
Web Marketing Week4cghb1210
 
Online Tool Utilization for Nonprofits
Online Tool Utilization for NonprofitsOnline Tool Utilization for Nonprofits
Online Tool Utilization for NonprofitsAsh Shepherd
 
Feedback Should Not Be An Echo Chamber
Feedback Should Not Be An Echo ChamberFeedback Should Not Be An Echo Chamber
Feedback Should Not Be An Echo ChamberTom Grant
 
NYC Data Driven Business Meetup - 2.7.17
NYC Data Driven Business Meetup - 2.7.17NYC Data Driven Business Meetup - 2.7.17
NYC Data Driven Business Meetup - 2.7.17Karl Pawlewicz
 
Making Sense of your data - eLearning Network April 2014
Making Sense of your data - eLearning Network April 2014Making Sense of your data - eLearning Network April 2014
Making Sense of your data - eLearning Network April 2014Andy Wooler
 
Information Search
Information SearchInformation Search
Information Searchallerhed
 
Amazon Product Review Sentiment Analysis with Machine Learning
Amazon Product Review Sentiment Analysis with Machine LearningAmazon Product Review Sentiment Analysis with Machine Learning
Amazon Product Review Sentiment Analysis with Machine Learningijtsrd
 
Product Sentiment Analysis
Product Sentiment AnalysisProduct Sentiment Analysis
Product Sentiment Analysisnancy amala
 
Veda Semantics - introduction document
Veda Semantics - introduction documentVeda Semantics - introduction document
Veda Semantics - introduction documentrajatkr
 
Introduction to lean analytics
Introduction to lean analyticsIntroduction to lean analytics
Introduction to lean analyticsKartik Narayanan
 
Big data for sales and marketing people
Big data for sales and marketing peopleBig data for sales and marketing people
Big data for sales and marketing peopleEdward Chenard
 
Big Data and Social CRM
Big Data and Social CRMBig Data and Social CRM
Big Data and Social CRMMichel Bruley
 
Content marketing eastwest_public_relations_2010
Content marketing eastwest_public_relations_2010Content marketing eastwest_public_relations_2010
Content marketing eastwest_public_relations_2010EASTWEST Public Relations
 

Similar to Amazon Product Review Data Analysis (20)

Web Marketing Week4
Web Marketing Week4Web Marketing Week4
Web Marketing Week4
 
Online Tool Utilization for Nonprofits
Online Tool Utilization for NonprofitsOnline Tool Utilization for Nonprofits
Online Tool Utilization for Nonprofits
 
Baxi boilers
Baxi boilersBaxi boilers
Baxi boilers
 
Feedback Should Not Be An Echo Chamber
Feedback Should Not Be An Echo ChamberFeedback Should Not Be An Echo Chamber
Feedback Should Not Be An Echo Chamber
 
NYC Data Driven Business Meetup - 2.7.17
NYC Data Driven Business Meetup - 2.7.17NYC Data Driven Business Meetup - 2.7.17
NYC Data Driven Business Meetup - 2.7.17
 
Longo
LongoLongo
Longo
 
Why I Use SharePoint
Why I Use SharePointWhy I Use SharePoint
Why I Use SharePoint
 
Mighty Guides- Data Disruption
Mighty Guides- Data DisruptionMighty Guides- Data Disruption
Mighty Guides- Data Disruption
 
Making Sense of your data - eLearning Network April 2014
Making Sense of your data - eLearning Network April 2014Making Sense of your data - eLearning Network April 2014
Making Sense of your data - eLearning Network April 2014
 
Information Search
Information SearchInformation Search
Information Search
 
Amazon Product Review Sentiment Analysis with Machine Learning
Amazon Product Review Sentiment Analysis with Machine LearningAmazon Product Review Sentiment Analysis with Machine Learning
Amazon Product Review Sentiment Analysis with Machine Learning
 
Key Phrases for Better Search
Key Phrases for Better SearchKey Phrases for Better Search
Key Phrases for Better Search
 
Cis 520 group h (1)
Cis 520 group h (1)Cis 520 group h (1)
Cis 520 group h (1)
 
Product Sentiment Analysis
Product Sentiment AnalysisProduct Sentiment Analysis
Product Sentiment Analysis
 
Veda Semantics - introduction document
Veda Semantics - introduction documentVeda Semantics - introduction document
Veda Semantics - introduction document
 
Introduction to lean analytics
Introduction to lean analyticsIntroduction to lean analytics
Introduction to lean analytics
 
Big data for sales and marketing people
Big data for sales and marketing peopleBig data for sales and marketing people
Big data for sales and marketing people
 
Big Data and Social CRM
Big Data and Social CRMBig Data and Social CRM
Big Data and Social CRM
 
Content marketing eastwest_public_relations_2010
Content marketing eastwest_public_relations_2010Content marketing eastwest_public_relations_2010
Content marketing eastwest_public_relations_2010
 
Content Marketing
Content MarketingContent Marketing
Content Marketing
 

More from Monika Mishra

Aws image recognition
Aws image recognitionAws image recognition
Aws image recognitionMonika Mishra
 
Drug Review Analysis Using Elasticsearch and Kibana
Drug Review Analysis Using Elasticsearch and KibanaDrug Review Analysis Using Elasticsearch and Kibana
Drug Review Analysis Using Elasticsearch and KibanaMonika Mishra
 
An Empirical Study on Customer Consumption, Loyalty and Retention on a B2C E-...
An Empirical Study on Customer Consumption, Loyalty and Retention on a B2C E-...An Empirical Study on Customer Consumption, Loyalty and Retention on a B2C E-...
An Empirical Study on Customer Consumption, Loyalty and Retention on a B2C E-...Monika Mishra
 
Re-admit Historical using SAS Visual Analytics
Re-admit Historical  using SAS Visual AnalyticsRe-admit Historical  using SAS Visual Analytics
Re-admit Historical using SAS Visual AnalyticsMonika Mishra
 
Diabetic Encounter Analysis using SAS studio
Diabetic Encounter Analysis using SAS studioDiabetic Encounter Analysis using SAS studio
Diabetic Encounter Analysis using SAS studioMonika Mishra
 
Superstore Data Analysis using R
Superstore Data Analysis using RSuperstore Data Analysis using R
Superstore Data Analysis using RMonika Mishra
 
LA Energy and Water Efficiency Statistics using Tableau
LA Energy and Water Efficiency Statistics using TableauLA Energy and Water Efficiency Statistics using Tableau
LA Energy and Water Efficiency Statistics using TableauMonika Mishra
 
Predicting Amazon Rating Using Spark ML and Azure ML
Predicting Amazon Rating Using Spark ML and Azure MLPredicting Amazon Rating Using Spark ML and Azure ML
Predicting Amazon Rating Using Spark ML and Azure MLMonika Mishra
 

More from Monika Mishra (8)

Aws image recognition
Aws image recognitionAws image recognition
Aws image recognition
 
Drug Review Analysis Using Elasticsearch and Kibana
Drug Review Analysis Using Elasticsearch and KibanaDrug Review Analysis Using Elasticsearch and Kibana
Drug Review Analysis Using Elasticsearch and Kibana
 
An Empirical Study on Customer Consumption, Loyalty and Retention on a B2C E-...
An Empirical Study on Customer Consumption, Loyalty and Retention on a B2C E-...An Empirical Study on Customer Consumption, Loyalty and Retention on a B2C E-...
An Empirical Study on Customer Consumption, Loyalty and Retention on a B2C E-...
 
Re-admit Historical using SAS Visual Analytics
Re-admit Historical  using SAS Visual AnalyticsRe-admit Historical  using SAS Visual Analytics
Re-admit Historical using SAS Visual Analytics
 
Diabetic Encounter Analysis using SAS studio
Diabetic Encounter Analysis using SAS studioDiabetic Encounter Analysis using SAS studio
Diabetic Encounter Analysis using SAS studio
 
Superstore Data Analysis using R
Superstore Data Analysis using RSuperstore Data Analysis using R
Superstore Data Analysis using R
 
LA Energy and Water Efficiency Statistics using Tableau
LA Energy and Water Efficiency Statistics using TableauLA Energy and Water Efficiency Statistics using Tableau
LA Energy and Water Efficiency Statistics using Tableau
 
Predicting Amazon Rating Using Spark ML and Azure ML
Predicting Amazon Rating Using Spark ML and Azure MLPredicting Amazon Rating Using Spark ML and Azure ML
Predicting Amazon Rating Using Spark ML and Azure ML
 

Recently uploaded

Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...
Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...
Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...Jack DiGiovanna
 
Saket, (-DELHI )+91-9654467111-(=)CHEAP Call Girls in Escorts Service Saket C...
Saket, (-DELHI )+91-9654467111-(=)CHEAP Call Girls in Escorts Service Saket C...Saket, (-DELHI )+91-9654467111-(=)CHEAP Call Girls in Escorts Service Saket C...
Saket, (-DELHI )+91-9654467111-(=)CHEAP Call Girls in Escorts Service Saket C...Sapana Sha
 
꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call
꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call
꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Callshivangimorya083
 
Full night 🥵 Call Girls Delhi New Friends Colony {9711199171} Sanya Reddy ✌️o...
Full night 🥵 Call Girls Delhi New Friends Colony {9711199171} Sanya Reddy ✌️o...Full night 🥵 Call Girls Delhi New Friends Colony {9711199171} Sanya Reddy ✌️o...
Full night 🥵 Call Girls Delhi New Friends Colony {9711199171} Sanya Reddy ✌️o...shivangimorya083
 
PKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptxPKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptxPramod Kumar Srivastava
 
Brighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data StorytellingBrighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data StorytellingNeil Barnes
 
Call Girls In Noida City Center Metro 24/7✡️9711147426✡️ Escorts Service
Call Girls In Noida City Center Metro 24/7✡️9711147426✡️ Escorts ServiceCall Girls In Noida City Center Metro 24/7✡️9711147426✡️ Escorts Service
Call Girls In Noida City Center Metro 24/7✡️9711147426✡️ Escorts Servicejennyeacort
 
100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptx100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptxAnupama Kate
 
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip CallDelhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Callshivangimorya083
 
High Class Call Girls Noida Sector 39 Aarushi 🔝8264348440🔝 Independent Escort...
High Class Call Girls Noida Sector 39 Aarushi 🔝8264348440🔝 Independent Escort...High Class Call Girls Noida Sector 39 Aarushi 🔝8264348440🔝 Independent Escort...
High Class Call Girls Noida Sector 39 Aarushi 🔝8264348440🔝 Independent Escort...soniya singh
 
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service BhilaiLow Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service BhilaiSuhani Kapoor
 
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...dajasot375
 
Unveiling Insights: The Role of a Data Analyst
Unveiling Insights: The Role of a Data AnalystUnveiling Insights: The Role of a Data Analyst
Unveiling Insights: The Role of a Data AnalystSamantha Rae Coolbeth
 
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /WhatsappsBeautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsappssapnasaifi408
 
20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdfHuman37
 
Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝soniya singh
 
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改atducpo
 
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdfMarket Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdfRachmat Ramadhan H
 
Customer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptxCustomer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptxEmmanuel Dauda
 

Recently uploaded (20)

Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...
Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...
Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...
 
Saket, (-DELHI )+91-9654467111-(=)CHEAP Call Girls in Escorts Service Saket C...
Saket, (-DELHI )+91-9654467111-(=)CHEAP Call Girls in Escorts Service Saket C...Saket, (-DELHI )+91-9654467111-(=)CHEAP Call Girls in Escorts Service Saket C...
Saket, (-DELHI )+91-9654467111-(=)CHEAP Call Girls in Escorts Service Saket C...
 
꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call
꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call
꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call
 
Full night 🥵 Call Girls Delhi New Friends Colony {9711199171} Sanya Reddy ✌️o...
Full night 🥵 Call Girls Delhi New Friends Colony {9711199171} Sanya Reddy ✌️o...Full night 🥵 Call Girls Delhi New Friends Colony {9711199171} Sanya Reddy ✌️o...
Full night 🥵 Call Girls Delhi New Friends Colony {9711199171} Sanya Reddy ✌️o...
 
PKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptxPKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptx
 
Brighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data StorytellingBrighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data Storytelling
 
Call Girls In Noida City Center Metro 24/7✡️9711147426✡️ Escorts Service
Call Girls In Noida City Center Metro 24/7✡️9711147426✡️ Escorts ServiceCall Girls In Noida City Center Metro 24/7✡️9711147426✡️ Escorts Service
Call Girls In Noida City Center Metro 24/7✡️9711147426✡️ Escorts Service
 
100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptx100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptx
 
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip CallDelhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
 
High Class Call Girls Noida Sector 39 Aarushi 🔝8264348440🔝 Independent Escort...
High Class Call Girls Noida Sector 39 Aarushi 🔝8264348440🔝 Independent Escort...High Class Call Girls Noida Sector 39 Aarushi 🔝8264348440🔝 Independent Escort...
High Class Call Girls Noida Sector 39 Aarushi 🔝8264348440🔝 Independent Escort...
 
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service BhilaiLow Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
 
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
 
Unveiling Insights: The Role of a Data Analyst
Unveiling Insights: The Role of a Data AnalystUnveiling Insights: The Role of a Data Analyst
Unveiling Insights: The Role of a Data Analyst
 
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /WhatsappsBeautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsapps
 
20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf
 
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
 
Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝
 
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
 
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdfMarket Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
 
Customer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptxCustomer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptx
 

Amazon Product Review Data Analysis

  • 1. Amazon Product Review Data Analysis GROUP 2 Jaydeep J Chopde Maitri S Shah Monika Mishra Pankti N Parikh Rakshith Chandan Babu Under the guidance of Dr. Jongwook Woo
  • 2. Introduction  With the quick growth of internet and it’s increasing accessibility, e-commerce has developed rapidly in the last few years.  With the introduction of e-commerce shops, we can buy anything with a click of the mouse.  The biggest disadvantage of e-commerce is that one is not able to see and feel the product.  Since consumers are not able to feel and touch the product, most of the the customers, on any online shopping sites, make purchasing decisions based on reviews and ratings.  And so it’s very important for business to know the various shopping patterns and customer’s sentiments based upon the reviews and ratings.
  • 3. ABOUT THE DATASET  Dataset : - https://s3.amazonaws.com/amazon- reviews-pds/tsv/index.txt  Products reviewed between 2005 and 2015 are analyzed  Countries considered : US, UK, FR , DE  File Size : 5.26 GB  Number of Files : 7  File Format : TSV (Tab Separated Values), CSV (Comma Separated Values)  Total no. of product reviews : 9.57 million
  • 4. CLUSTER DETAILS Cluster Version : Oracle Big Data Compute Edition No. of Nodes : 5 Memory Size : 150 GB CPU : 20 vCPU HDFS Capacity : 147 GB Storage : 678 GB
  • 5. BIG DATA  Big data is a term used to refer to the study and applications of data sets that are too complex for traditional data-processing application software to adequately deal with.  It works on the principle that the more you know about anything the more reliably you can gain new insights and make predictions about it’s future. By comparing more data points, relationships begin to emerge and these relationships enable us to learn and make smarter decisions.
  • 6. HADOOP Hadoop is a framework to process Big Data. It is a framework that enables you to store and process large data sets in parallel and distributed fashion. Hadoop Core Components: Hadoop Distributed File System (HDFS) takes care of storage part of Hadoop architecture. MapReduce is a processing model and software framework for writing applications which can run on Hadoop. These programs of MapReduce are capable of processing Big Data in parallel on large clusters of computational nodes.
  • 7. HIVE  Hive is a data warehouse infrastructure tool to process structured data in Hadoop.  It resides on top of Hadoop to summarize Big Data, and makes querying and analyzing easy.  Initially Hive was developed by Facebook, later the Apache Software Foundation took it up and developed it further as an open source under the name Apache Hive.  It stores schema in a database and processed data into HDFS.  It provides SQL type language for querying called HiveQL.  It is familiar, fast, scalable, and extensible.
  • 8. FLOWCHART Download Dataset Upload data into HDFS Trigger Hive Queries Output Visualizations Find Insights
  • 10. Total review count by country
  • 11. Count of reviews by country
  • 12. Least Rated Product • Only Product with at least 50 review were considered • The least rated product is at 1.48
  • 13. Common Words used in comments Bigrams Trigram • The most common phrase is “waste of”.
  • 14. Inights of the Sentiment Analysis Problems Misleading Description No free choice for streaming. No Support for local channels Solution Proper description. Addition streaming service. Support for local channels.
  • 15. Distribution of overall ratings of amazon products
  • 16. Number of reviews given by unique users over 10 years
  • 17. Review count by year and month
  • 18. Review count for product category
  • 19. Popular product based on average rating and review count
  • 20. Rating based geospatial representation for product category- baby
  • 21. INSIGHTS  Books is the most popular category based on ratings and reviews.  Around 3,162 reviews(maximum) were written by one user in the span of 10 years.  The review count has gradually increased over the years.  The review count is maximum in the holiday months – November, December, January.  64.57% people gave the maximum rating 5 to the products.  Video DVD received the maximum number of reviews.  The consumer sentiments is mostly positive in US, UK and Germany country.  Digital products have received more reviews than the non- digital products.
  • 23. Datsentia Source URLs  US : https://s3.amazonaws.com/amazon-reviews- pds/tsv/amazon_reviews_multilingual_US_v1_00.tsv.gz  DE : https://s3.amazonaws.com/amazon-reviews- pds/tsv/amazon_reviews_multilingual_DE_v1_00.tsv.gz  UK : https://s3.amazonaws.com/amazon-reviews- pds/tsv/amazon_reviews_multilingual_UK_v1_00.tsv.gz  FR : https://s3.amazonaws.com/amazon-reviews- pds/tsv/amazon_reviews_multilingual_FR_v1_00.tsv.gz  US Dictionary : https://s3.amazonaws.com/hipicdatasets/dictionary.tsv  German Dictionary : http://www.ulliwaltinger.de/ment/GermanPolarityClues- 2012.zip  French Dictionary : https://advance.lirmm.fr/FEEL.csv