Reflection #2 – [1/23] – Aparna Gupta

Paper: The Language that Gets People to Give: Phrases that Predict Success on Kickstarter.

Summary:

The paper talks about the Crowdfunding websites like Kickstarter where entrepreneurs and artists look for the internet for funding. This paper explores the factors which lead to successful funding a crowdfunding project and looks to answer the question – “What makes a project succeed in order to get funded”. The presented work focuses more on the predictive power of content, and more precisely the words and phrases project creators use to pitch their projects. The authors have analyzed 45K Kickstarter projects. To ensure generalization, they have used phrases which occurred >50 times in all the projects under consideration. The paper concludes with the citing that projects which shows reciprocity, Scarcity, Social Proof, Authority, Social Identity and Liking are more likely to get funded.

Reflection:

The paper gives a hang of some of the important phrases which can determine the probability of getting successfully funded on Kickstarter. However, the question which stuck my mind is “Can these phrases be generalized across various genres?”. The paper states that by analyzing the project content and most commonly occurring phrases one can understand the social reaction of an individual. However, I feel that this can be biased, in the sense that the reasoning behind specific reactions cannot be known. It might happen that a project does not get the funding because the person listening to the pitch does not have interest in the field. How should reactions(maybe biased) be interpreted or taken into consideration?

The paper lists the factors like –  project goal, duration, category, the presence of a video etc. which plays a significant role in predicting whether a project will get funded. I agree to these since presenting a video can explain a concept better. Visualizations expedite the understanding process of the viewers. However, I am curious to understand if “what the product is about and how useful it’ll be in future, can also be served as a feature in determining the getting funded status of a project

The statistical analyses explained in the paper depicts the amalgamation of modeling and sociology. The authors have used ‘LASSO’ to determine the feature importance. Can other statistical models be used as well, in this scenario? The modeling results, however, highlight phrases like ‘good karma’, ‘used in a’ etc, which were contained in the funded projects looked misplaced. The authors have also raised a similar question for a phrase like ‘cat’ being present in most projects which got funded. What intrigues me is: Although a lot of research has already been conducted to understand sociology using statistical modeling, there are still some facts about social behavior which are unexplored and difficult to understand.

This paper overall explores a challenging question of determining what features, language and English phrases compel people to invest in a project.

Leave a Reply

Your email address will not be published. Required fields are marked *