Top TV Shows & Movies
收藏Snowflake2024-02-20 更新2024-05-01 收录
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资源简介:
What this data set is:
Top & trending media (shows & movies) in the US, by day. This is the audience engagement equivalent to the Nielsen Top 10 (which is based on hours viewed across linear and/or streaming) or the Netflix Top 10 (based on hours viewed).
Data Detail:
This data set contains 4 lists, representing the top 10 most engaged with content for yesterday:
~All Content
~Most Anticipated (across unreleased content)
~Top Movies
~Top Shows
Methodology:
Diesel Labs is a data curation company that specializes in deriving insights from the major social and video platforms to help researchers and analysts understand what topics are the most important and why. This report includes data from Facebook, Twitter, YouTube and Wikipedia, across all relevant engagement types (video views, page views, likes, shares and comments).
Application guidance / ideas:
This report can be used in conjunction with other forms of data (viewership hours, ratings, etc) to help evaluate content performance and valuation. For example, content with high viewership and low audience attention suggests limited impact on subscribership growth, while high viewership and high audience attention suggests greater impact on subscribership growth and therefore greater value).
This report can also be used to assess the ‘flavor’ of engagement taking place, as a higher proportion of commentary may be more beneficial than a higher proportion of likes (which is a more passive metric).
About Diesel Labs:
Diesel Labs measures audience engagement with content across all major social and video platforms - curating, organizing and analyzing the vast unstructured data and readying it for seamless integration into business intelligence tools, reporting and even generative AI models.
提供机构:
Diesel Labs
创建时间:
2024-02-07
搜集汇总
数据集介绍

背景与挑战
背景概述
该数据集提供了美国每日最受欢迎的影视内容榜单,包含四个分类列表,数据来源于主要社交媒体和视频平台的用户互动指标。它可用于评估内容表现和价值,辅助商业决策分析。
以上内容由遇见数据集搜集并总结生成



