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The iPhone is a smartphone made by Apple that combines a computer, iPod, digital camera, and cellular phone into one device with a touchscreen interface. The iPhone runs the iOS operating system, and in 2021 when the iPhone 13 was introduced, it offered up to 1 TB of storage and a 12-megapixel camera. Different users different e-commerce websites like Flipkart, Amazon, meesho, etc, to find their desired products. In this dataset, we will see the iPhone prices, ratings, reviews, and its RAM on Amazon.
This dataset is for beginners who have started their journey in data analytics.
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1) Data introduction • Apple-iphone-se-reviews dataset is a dataset that scrapes data from the Flipkart website using Selenium and BeautifulSoup links.
2) Data utilization (1)Apple-iphone-se-reviews data has characteristics that: • User ratings for Apple iPhone SE on Indian e-commerce website Flipkart are . We aim at NLP text classification through user ratings, review titles, and review text. (2)Apple-iphone-se-reviews data can be used to: • Rating prediction: You can support automated review analysis and summarization by developing machine learning models to predict ratings based on review text. • Product Improvement: Insights gained from reviews can help us identify common issues and areas for improvement in iPhone SE and guide product development and quality improvements.
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The ever-changing mobile landscape is a challenging space to navigate. . The percentage of mobile over desktop is only increasing. Android holds about 53.2% of the smartphone market, while iOS is 43%. To get more people to download your app, you need to make sure they can easily find your app. Mobile app analytics is a great way to understand the existing strategy to drive growth and retention of future user.
With million of apps around nowadays, the following data set has become very key to getting top trending apps in iOS app store. This data set contains more than 7000 Apple iOS mobile application details. The data was extracted from the iTunes Search API at the Apple Inc website. R and linux web scraping tools were used for this study.
Interactive full Shiny app can be seen here( https://multiscal.shinyapps.io/appStore/)
Data collection date (from API); July 2017
Dimension of the data set; 7197 rows and 16 columns
"id" : App ID
"track_name": App Name
"size_bytes": Size (in Bytes)
"currency": Currency Type
"price": Price amount
"rating_count_tot": User Rating counts (for all version)
"rating_count_ver": User Rating counts (for current version)
"user_rating" : Average User Rating value (for all version)
"user_rating_ver": Average User Rating value (for current version)
"ver" : Latest version code
"cont_rating": Content Rating
"prime_genre": Primary Genre
"sup_devices.num": Number of supporting devices
"ipadSc_urls.num": Number of screenshots showed for display
"lang.num": Number of supported languages
"vpp_lic": Vpp Device Based Licensing Enabled
The data was extracted from the iTunes Search API at the Apple Inc website. R and linux web scraping tools were used for this study.
Reference: R package
From github, with
devtools::install_github("ramamet/applestoreR")
Copyright (c) 2018 Ramanathan Perumal
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TwitterDelve into the vibrant world of iPhone reselling with 'eBay iPhone Pricing Trends 2023', a rich dataset showcasing seller-driven prices for iPhone models like 11 Pro Max, 12 Pro Max, 13 Pro Max, 14 Pro Max, and XR. Ethically compiled, this data captures eBay's bustling market dynamics, offering a unique lens into how sellers price these high-demand Apple products. Ideal for data enthusiasts, this dataset is a gateway to insights on pricing strategy, market demand, and consumer trends. Elevate your market analysis with this authentic, eBay-sourced dataset, a window into the evolving secondary iPhone market. (Tool: Selenium has been used)
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App Tracking Transparency Key StatisticsATT Opt-In Rate by App CategoryATT Opt-In Rate by Game CategoryATT Opt-In Rate by CountryiOS Apps User TrackingiOS Apps Background Location AccessiOS Apps...
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TwitterVector-type data describing various drinking and non-drinking water distribution points: wallace fountain, fountain terminal, valve, mouth... < strong style = " line @-@ height: 1.45em;">Example(s) of re-use(s) of data: http://www.eaupen.net
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Discover the booming mobile web analytics market! Learn about its $4.5B+ size in 2025, projected 15% CAGR growth, key players (Google, Facebook, Tencent), and regional trends. Optimize your mobile strategy with our insightful market analysis.
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We release two datasets that are part of the the Semantic Web Challenge on Mining the Web of HTML-embedded Product Data is co-located with the 19th International Semantic Web Conference (https://iswc2020.semanticweb.org/, 2-6 Nov 2020 at Athens, Greece). The datasets belong to two shared tasks related to product data mining on the Web: (1) product matching (linking) and (2) product classification. This event is organised by The University of Sheffield, The University of Mannheim and Amazon, and is open to anyone. Systems successfully beating the baseline of the respective task, will be invited to write a paper describing their method and system and present the method as a poster (and potentially also a short talk) at the ISWC2020 conference. Winners of each task will be awarded 500 euro as prize (partly sponsored by Peak Indicators, https://www.peakindicators.com/).
The challenge organises two tasks, product matching and product categorisation.
i) Product Matching deals with identifying product offers on different websites that refer to the same real-world product (e.g., the same iPhone X model offered using different names/offer titles as well as different descriptions on various websites). A multi-million product offer corpus (16M) containing product offer clusters is released for the generation of training data. A validation set containing 1.1K offer pairs and a test set of 600 offer pairs will also be released. The goal of this task is to classify if the offer pairs in these datasets are match (i.e., referring to the same product) or non-match.
ii) Product classification deals with assigning predefined product category labels (which can be multiple levels) to product instances (e.g., iPhone X is a ‘SmartPhone’, and also ‘Electronics’). A training dataset containing 10K product offers, a validation set of 3K product offers and a test set of 3K product offers will be released. Each dataset contains product offers with their metadata (e.g., name, description, URL) and three classification labels each corresponding to a level in the GS1 Global Product Classification taxonomy. The goal is to classify these product offers into the pre-defined category labels.
All datasets are built based on structured data that was extracted from the Common Crawl (https://commoncrawl.org/) by the Web Data Commons project (http://webdatacommons.org/). Datasets can be found at: https://ir-ischool-uos.github.io/mwpd/
The challenge will also release utility code (in Python) for processing the above datasets and scoring the system outputs. In addition, the following language resources for product-related data mining tasks: A text corpus of 150 million product offer descriptions Word embeddings trained on the above corpus
For details of the challenge please visit https://ir-ischool-uos.github.io/mwpd/
Dr Ziqi Zhang (Information School, The University of Sheffield) Prof. Christian Bizer (Institute of Computer Science and Business Informatics, The Mannheim University) Dr Haiping Lu (Department of Computer Science, The University of Sheffield) Dr Jun Ma (Amazon Inc. Seattle, US) Prof. Paul Clough (Information School, The University of Sheffield & Peak Indicators) Ms Anna Primpeli (Institute of Computer Science and Business Informatics, The Mannheim University) Mr Ralph Peeters (Institute of Computer Science and Business Informatics, The Mannheim University) Mr. Abdulkareem Alqusair (Information School, The University of Sheffield)
To contact the organising committee please use the Google discussion group https://groups.google.com/forum/#!forum/mwpd2020
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The iPhone is a smartphone made by Apple that combines a computer, iPod, digital camera, and cellular phone into one device with a touchscreen interface. The iPhone runs the iOS operating system, and in 2021 when the iPhone 13 was introduced, it offered up to 1 TB of storage and a 12-megapixel camera. Different users different e-commerce websites like Flipkart, Amazon, meesho, etc, to find their desired products. In this dataset, we will see the iPhone prices, ratings, reviews, and its RAM on Amazon.
This dataset is for beginners who have started their journey in data analytics.