Anticipating Advertisement Visibility using Prospective Representation

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@ IJTSRD | Available Online @ www ISSN No: 245 Inte R Anticipat using P 1 Swathi Voddi, 1,2,3 Department of CSE Gangur ABSTRACT Exhibiting advertisements through onlin current trend. To draw the attention of t advertisers will try to send advertising m web pages. Every advertiser will be cha ad is viewed. From the recent studies, i that due to lack of scrolling more than h do not appear. So, large quantity of mo wasted on these ads and is not bringing result. To avoid that, this paper sugges i.e., probabilistic latent class models us visibility of ads can be forecasted co scrolls and clicks of the ads posted on th Keywords: visibility anticipation, user a I. INTRODUCTION Exhibiting advertisements through onlin prevalent in the current circumstances in studies[1] that exhibiting the adver created earnings of over $63.2 billio administrator, who consolidates ads webpages and a promoter, who furnish shown are engaged in online Advertisements can be shown in differ comprises of items like video, audio image etc. In online marketing, promote the administrator in order to provid showing their ads, to seek the atte viewers. A page is called viewed, when requests for a page, the page is shown i This is called as page sight. One displa page sight is called as ad impact. w.ijtsrd.com | Volume – 2 | Issue – 3 | Mar-Apr 56 - 6470 | www.ijtsrd.com | Volum ernational Journal of Trend in Sc Research and Development (IJT International Open Access Journ ting Advertisement Visibility Prospective Representation , 2 Phani Sri Koritala, 3 Priya Darshini Muchu 1 Assistant Professor, E, Dhanekula Institute of Engineering & Techn ru, Vijayawada, Andhra Pradesh, India ne became the the customers, messages using arged when an it was detected half of the ads oney is getting any beneficial sts two models sing which the onsidering the he web page. actions, clicks ne is becoming s. It is shown rtisements has on in 2015. An s on to the hes ads to be e marketing. rent forms and o, flash, text, er has to pay to de space for ention of the never the user in the browser. ay of an ad in Promoters pay to the admin impact feeling that their ads clicked. Traditional methods f contain clicks and conversio positive way after viewing th profit directly. There is a lo predicting click rate and c optimization[3], and auctions[ Currently, the interest of the towards online display a to raise the brand appreciatio products of their company. Ce to buy the products from t observe and trust. Online mar will develop trust in users a them excited about it. Despite these ads and calculating the c rate will be inadequate. To discourse this issue, on extends ads based on the num an administrator provided has market. However, a recent stu more than half of the a exposed on the user's screen users, as they do not scroll the bottom. This paper studies the iss probability that a user scro the page where, actually an ad here is, users see only the we So, it becomes difficult to find r 2018 Page: 1348 me - 2 | Issue 3 cientific TSRD) nal u nology, nistrator for every ad are seen, scrolled and for ad views calculation ons (impact created in he ads), which gets the ot of research done for conversion rate[2], bid [4]. promoters is expanding advertisements in order on and to promote the ertainly, all the users like the brands, which they rketing by displaying ads about the brand making e, users do not click on click rate and conversion ne more model, which mber of impressions that s become famous in the udy [5] is showing that, advertisements are not and are not seen by the e page completely to the sue of estimating the olling to the depth of d is placed. First issue eb pages in the website. d the interests of the user

description

Exhibiting advertisements through online became the current trend. To draw the attention of the customers, advertisers will try to send advertising messages using web pages. Every advertiser will be charged when an ad is viewed. From the recent studies, it was detected that due to lack of scrolling more than half of the ads do not appear. So, large quantity of money is getting wasted on these ads and is not bringing any beneficial result. To avoid that, this paper suggests two models i.e., probabilistic latent class models using which the visibility of ads can be forecasted considering the scrolls and clicks of the ads posted on the web page. Swathi Voddi | Phani Sri Koritala | Priya Darshini Muchu "Anticipating Advertisement Visibility using Prospective Representation" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-2 | Issue-3 , April 2018, URL: https://www.ijtsrd.com/papers/ijtsrd11329.pdf Paper URL: http://www.ijtsrd.com/computer-science/data-miining/11329/anticipating-advertisement-visibility-using-prospective-representation/swathi-voddi

Transcript of Anticipating Advertisement Visibility using Prospective Representation

Page 1: Anticipating Advertisement Visibility using Prospective Representation

@ IJTSRD | Available Online @ www.ijtsrd.com

ISSN No: 2456

InternationalResearch

Anticipating Advertisement Vusing Prospective Representation

1Swathi Voddi,

1,2,3Department of CSE, Dhanekula Institute ofGanguru, Vijayawada, A

ABSTRACT

Exhibiting advertisements through online became the current trend. To draw the attention of the customers, advertisers will try to send advertising messages using web pages. Every advertiser will be charged when an ad is viewed. From the recent studies, it was detected that due to lack of scrolling more than half of the ads do not appear. So, large quantity of money is getting wasted on these ads and is not bringing any beneficial result. To avoid that, this paper suggests two models i.e., probabilistic latent class models using which the visibility of ads can be forecasted considering the scrolls and clicks of the ads posted on the web page. Keywords: visibility anticipation, user actions, clicks I. INTRODUCTION

Exhibiting advertisements through online is becoming prevalent in the current circumstances.in studies[1] that exhibiting the advertisements has created earnings of over $63.2 billion inadministrator, who consolidates ads on to the webpages and a promoter, who furnishes ads to be shown are engaged in online marketing. Advertisements can be shown in different forms and comprises of items like video, audio, flash, image etc. In online marketing, promoter has to pay to the administrator in order to provide space for showing their ads, to seek the attention of the viewers. A page is called viewed, whenever the user requests for a page, the page is shown in the bThis is called as page sight. One display of an ad in page sight is called as ad impact.

@ IJTSRD | Available Online @ www.ijtsrd.com | Volume – 2 | Issue – 3 | Mar-Apr 2018

ISSN No: 2456 - 6470 | www.ijtsrd.com | Volume

International Journal of Trend in Scientific Research and Development (IJTSRD)

International Open Access Journal

Anticipating Advertisement Visibility sing Prospective Representation

Swathi Voddi, 2Phani Sri Koritala, 3Priya Darshini Muchu

1Assistant Professor, of CSE, Dhanekula Institute of Engineering & Technology,

Ganguru, Vijayawada, Andhra Pradesh, India

Exhibiting advertisements through online became the current trend. To draw the attention of the customers,

tising messages using web pages. Every advertiser will be charged when an ad is viewed. From the recent studies, it was detected that due to lack of scrolling more than half of the ads do not appear. So, large quantity of money is getting

ds and is not bringing any beneficial result. To avoid that, this paper suggests two models i.e., probabilistic latent class models using which the visibility of ads can be forecasted considering the scrolls and clicks of the ads posted on the web page.

: visibility anticipation, user actions, clicks

Exhibiting advertisements through online is becoming prevalent in the current circumstances. It is shown

that exhibiting the advertisements has $63.2 billion in 2015. An

administrator, who consolidates ads on to the who furnishes ads to be

shown are engaged in online marketing. Advertisements can be shown in different forms and comprises of items like video, audio, flash, text, image etc. In online marketing, promoter has to pay to

provide space for to seek the attention of the

page is called viewed, whenever the user requests for a page, the page is shown in the browser.

display of an ad in

Promoters pay to the administrator for every ad impact feeling that their ads are seen, scrolled and clicked. Traditional methods for ad views calculation contain clicks and conversions (impact created in positive way after viewing the ads), which gets the profit directly. There is a lot ofpredicting click rate and conversion rate[2], bid optimization[3], and auctions[4]. Currently, the interest of the promoters is expanding towards online display advertisementsto raise the brand appreciation and to promote the products of their company. Certainly,to buy the products from the brands, which they observe and trust. Online marketing bywill develop trust in users about thethem excited about it. Despite, usersthese ads and calculating the click rate and conversion rate will be inadequate. To discourse this issue, onextends ads based on the number of impressions that an administrator provided has become famous in the market. However, a recent study [5] is showing that, more than half of the advertisements are not exposed on the user's screen andusers, as they do not scroll the page completely tobottom. This paper studies the issue of estimating the probability that a user scrolling to the depth of the page where, actually an adhere is, users see only the web pages in the website. So, it becomes difficult to find the

Apr 2018 Page: 1348

6470 | www.ijtsrd.com | Volume - 2 | Issue – 3

Scientific (IJTSRD)

International Open Access Journal

Priya Darshini Muchu

Engineering & Technology,

to the administrator for every ad ads are seen, scrolled and

clicked. Traditional methods for ad views calculation contain clicks and conversions (impact created in

way after viewing the ads), which gets the profit directly. There is a lot of research done for predicting click rate and conversion rate[2], bid optimization[3], and auctions[4].

interest of the promoters is expanding towards online display advertisements in order

raise the brand appreciation and to promote the Certainly, all the users like

to buy the products from the brands, which they rust. Online marketing by displaying ads

will develop trust in users about the brand making excited about it. Despite, users do not click on

these ads and calculating the click rate and conversion

To discourse this issue, one more model, which extends ads based on the number of impressions that an administrator provided has become famous in the

study [5] is showing that, more than half of the advertisements are not

on the user's screen and are not seen by the users, as they do not scroll the page completely to the

This paper studies the issue of estimating the scrolling to the depth of

ad is placed. First issue only the web pages in the website.

So, it becomes difficult to find the interests of the user

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International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456-6470

@ IJTSRD | Available Online @ www.ijtsrd.com | Volume – 2 | Issue – 3 | Mar-Apr 2018 Page: 1349

from the history. Second is, it is hard to find the important web pages and features of users. Here, topics in the page and interests of the user are the affecting aspects. However, a frequently used latent model, Singular Value Decomposition(SVD) is not sufficient to produce the probability estimation of scroll depth completely. There is another latent model, Support Vector Machine(SVM), which is an extension to the SVD and produces results in a more accurate way when compared to SVD. II. LITERATURE REVIEW

After many researches, the scrolling behavior and visibility for web pages is examined. In [6], [7], [8], the authors recognized that upper half of the page is viewed more by users than the lower half of the page leading to wastage of time. Also, the division of the percentage of content seen by users is following distribution like Gaussian. In our main goal, which is visibility anticipation, we vary from these works. Existing work [9], [10] gathers scrolling behavior and uses it as an implicit indicator of user interests to measure webpage quality. In contrast we design algorithms to predict scrolling response for any user-webpage pair. In our application the existing methods for click anticipation are not applicable. Search engines are generally using Generalized Second Prize (GSP) auctions currently for vending their ad slots. When executing GSP auctions, most search engines had recommended approximate match between queries and bid keywords. Despite, it has been disclosed that there are many theoretical drawbacks in the GSP auction with standard broad match mechanism. III. PROPOSED SYSTEM

In divergence to the existing system, in this paper we develop a web application where the key modules are user, admin and viewing/login. The basic functionalities of the admin is adding the advertisements into the website, viewing the ads, calculating the probability of the ads considering the views, scrolls, clicks and user behavior. The admin will be having the command to add, delete, and modify the ads, which are posted. Initially, former viewing the content in the application, every user should go through the phase of registration. Later, by logging in to the system, they can perform their actions in the website (where the ads will be displayed).

Fig. 1 : Architecture of the system

Any longer, to convene an ad as an efficiently scrolled or efficiently clicked one, it should attain the threshold point. Threshold point is the point, which describes the probability of an ad. SVM, which is the premier classifier, is used to get the accurate results. It possesses definite predictive ability in long run. Computing the mean and standard deviation can represent probability. The mean() and standard deviation() for each user will be calculated individually for their views, scrolls and clicks. Following the calculation for individual users, summation of those values will be used for determining the percentage of the visibility.

Attribute Name

Type Length Description

Id Varchar 20 User’s id Name Varchar 20 User’s full name Password Varchar 20 User’s password Address Varchar 20 User’s address

Table 1: User Registration Attribute

Name Type Length Description

AddID Varchar 20 Add Index number

ADD name Varchar 20 Name of Ad

Add Image BLOB 1MB Image

Status Varchar 20 Active/Inactive

Table 2: Adding ads Probability Calculation: PLC const outputs the probability P(xua|u, a), where xua is the max scroll depth that a user u reaches on a page a. Formally, PLC const works as follow:

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International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456-6470

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P(xua|u, a) = ΣNsΣNp P(s|u)P(p|a)P(xua|fuac, s, p; Wsp)

where xua is the max scroll depth of a page view. Ns is the number of latent user classes, and Np is the number of latent webpage classes. l(P(s|u), P(p|a), W,σ) = Σu,a ln(ΣNsΣNp P(s|u)P(p|a)P(xua|f

uac, s, p; Wsp) To maximize it, the Expectation Maximization (EM) Algorithm is assumed. The EM algorithm is widely used to solve the maximum-likelihood parameter estimation problem P(s|u)* ∝ Σ p,a P(s, p| fuac) P(p|a)* ∝ Σ s,u P(s, p| fuac) (α, β, W, σ) denote the weight vectors of all latent user and webpage classes as well as the weight vectors and standard deviations of all latent user and webpage class pairs, respectively. l(α, β, W, σ) = Σu,a ln(ΣNsΣNp P(s|fu ; αs) P(p|fa ; βp) P(xua|f

uac, s, p; wsp)) Similar with PLC const, the EM algorithm is adopted to learn the parameters iteratively in PLC dyn.

Ns/Np PLC_const PLC_dyn

Ns = 1, Np = 1 0.4654 0.4501

Ns = 5, Np = 5 0.4501 0.4443

Ns = 6, Np = 8 0.4609 0.4425

Ns = 8, Np = 7 0.4581 0.4475

Ns = 10, Np = 10 0.4601 0.4467

IV. CONCLUSION

To the best of our understanding, our paper recommends a proficient solution for anticipating the visibility prediction of ads taking in view the scrolls, number of clicks per user and webpage pair. Acquiring a solution to this issue can assist online

promoters to enable them to spend more productively in promoting and can assist administrators to escalate their earnings. It consumes less memory and works fast when collated to comparative systems.

REFERENCES

1. I. Lunden, “Internet ad spend to reach $121b in 2014,” http://techcrunch.com/2014/04/07/internet-ad-spend-to-reach- 121b-in-2014-23-of-537b-total-ad-spend-ad-tech-gives-display-a- boost-over-search/.

2. Y. Chen and T. W. Yan, “Position-normalized click prediction in search advertising,” in KDD’12, 2012, pp. 795–803.

3. W. Zhang, S. Yuan, and J. Wang, “Optimal real-time bidding for display advertising,” in ACM SIGKDD’14, 2014, pp. 1077–1086.

4. W. Chen, D. He, T.-Y. Liu, T. Qin, Y. Tao, and L. Wang, “Generalized second price auction with probabilistic broad match,” in ACM EC’14, 2014, pp. 39–56.

5. "The importance of being seen", Nov. 2014, [online] Available: http://think.storage.googleapis.com/docs/the-importance-of-being-seen_study.pdf.

6. S. Flosi, G. Fulgoni, A. Vollman, "If an advertisement runs online and no one sees it is it still an ad?", J. Advertising Res., vol. 52, 2013.

7. H. Weinreich, H. Obendorf, E. Herder, M. Mayer, "Not quite the average: An empirical study of Web use", ACM Trans. Web, vol. 2, no. 1, 2008.

8. F. Manjoo, "You won’t finish this article", Slate, 2013.

9. E. Agichtein, E. Brill, S. Dumais, "Improving Web search ranking by incorporating user behavior information", Proc. 29th Annu. Int. ACM SIGIR Conf. Res. Develop. Inf. Retrieval, pp. 19-26, 2006.

10. M. Holub, M. Bielikova, "Estimation of user interest in visited Web page", Proc. 19th Int. Conf. World Wide Web, pp. 1111-1112, 2010.

11. Chong Wang, Achir Kalra, Li Zhou, Cristian Borcea, Member,IEEE and Yi Chen, Member, IEEEs https://www.researchgate.net/publication/317072765_Probabilistic_Models_For_Ad_Viewability_Prediction_On_The_Web.