Measuring Effectiveness of Video Advertisements

01/15/2019
by   James Hahn, et al.
4

Advertisements are unavoidable in modern society. Times Square is notorious for its incessant display of advertisements. Its popularity is worldwide and smaller cities possess miniature versions of the display, such as Pittsburgh and its digital works in Oakland on Forbes Avenue. Tokyo's Ginza district recently rose to popularity due to its upscale shops and constant onslaught of advertisements to pedestrians. Advertisements arise in other mediums as well. For example, they help popular streaming services, such as Spotify, Hulu, and Youtube TV gather significant streams of revenue to reduce the cost of monthly subscriptions for consumers. Ads provide an additional source of money for companies and entire industries to allocate resources toward alternative business motives. They are attractive to companies and nearly unavoidable for consumers. One challenge for advertisers is examining a advertisement's effectiveness or usefulness in conveying a message to their targeted demographics. Rather than constructing a single, static image of content, a video advertisement possesses hundreds of frames of data with varying scenes, actors, objects, and complexity. Therefore, measuring effectiveness of video advertisements is important to impacting a billion-dollar industry. This paper explores the combination of human-annotated features and common video processing techniques to predict effectiveness ratings of advertisements collected from Youtube. This task is seen as a binary (effective vs. non-effective), four-way, and five-way machine learning classification task. The first findings in terms of accuracy and inference on this dataset, as well as some of the first ad research, on a small dataset are presented. Accuracies of 84%, 65%, and 55% are reached on the binary, four-way, and five-way tasks respectively.

READ FULL TEXT

page 1

page 5

page 6

page 8

research
05/01/2018

Collaborations on YouTube: From Unsupervised Detection to the Impact on Video and Channel Popularity

YouTube is one of the most popular platforms for streaming of user-gener...
research
06/20/2022

5th Place Solution for YouTube-VOS Challenge 2022: Video Object Segmentation

Video object segmentation (VOS) has made significant progress with the r...
research
09/29/2018

Non-local NetVLAD Encoding for Video Classification

This paper describes our solution for the 2^nd YouTube-8M video understa...
research
11/18/2022

The Runner-up Solution for YouTube-VIS Long Video Challenge 2022

This technical report describes our 2nd-place solution for the ECCV 2022...
research
04/06/2018

Modeling Popularity in Asynchronous Social Media Streams with Recurrent Neural Networks

Understanding and predicting the popularity of online items is an import...
research
05/12/2021

Monetizing Propaganda: How Far-right Extremists Earn Money by Video Streaming

Video streaming platforms such as Youtube, Twitch, and DLive allow users...

Please sign up or login with your details

Forgot password? Click here to reset