제품

SurveyMonkey는 모든 사용 사례와 요구를 다루도록 구축되었습니다. 제품을 둘러보고 SurveyMonkey로 어떤 효과를 누릴 수 있는지 알아보세요.

온라인 설문조사의 글로벌 리더로부터 데이터 기반 인사이트를 얻으세요.

하나의 강력한 플랫폼에 있는 핵심 기능과 고급 도구를 살펴보세요.

정보 수집과 결제를 위한 온라인 양식을 만들고 맞춤화하세요.

100개 이상의 앱 및 플러그인과 연동하여 업무 효율성 향상

시장 조사에 필요한 모든 것을 갖춘 솔루션

빌트인 AI을 통한 더 나은 설문조사 작성과 빠른 인사이트 발견

템플릿

비즈니스에 대한 고객 만족도와 충성도를 측정

고객을 만족시켜 지지자로 만드는 것이 무엇인지 파악

실행 가능한 인사이트를 얻어 사용자 경험을 개선

잠재 고객, 참석자 등으로부터 연락처 정보를 수집

다음 이벤트를 위해 쉽게 RSVP를 받고 확인

다음 이벤트의 개선을 위해 참석자가 무엇을 원하는지 파악

참여도를 높이고 더 나은 결과를 이끌어낼 인사이트를 발견

참석자들의 피드백을 받아 회의 운영 방법을 개선

동료 피드백을 통한 직원 성과 향상

더 나은 코스를 만들고 교수법을 개선

학생들이 코스 자료 및 프레젠테이션을 어떻게 평가하는지 파악

신제품 아이디어에 대한 고객의 생각을 파악

리소스

설문조사 및 설문조사 데이터 사용에 대한 모범 사례

설문조사, 비즈니스를 위한 팁 등에 관한 블로그

SurveyMonkey 이용에 대한 튜토리얼 및 사용법 가이드

최고의 브랜드들이 SurveyMonkey로 성장을 견인하는 방법

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3 Natural Language Processing use cases for analyzing survey responses

Say you ran a survey and collected responses from 1,000 individuals.

You’ve included two open-ended questions in your survey and all 1,000 of your respondents answered them, using 15 words each.

Using simple arithmetic, you’ll find that you’ve collected 2,000 open-ended responses (2 * 1,000) that totaled 30,000 words (2,000 * 15).

With such a daunting amount of text to read, how can you reasonably expect to review and identify the key insights from your responses?

The answer to both of these questions involves the use of Natural Language Processing, often referred to as NLP, which is essentially the process of using computers to help understand large amounts of text data.

Throughout this page, we’ll provide an introduction to Natural Language Processing and discuss how to use it to help review your survey results. By the end, you’ll have an idea of how to use Natural Language Processing in your future surveys.

Natural Language Processing is a field where computer programming and machine learning techniques attempt to understand and make use of large volumes of text data.

Natural Language Processing offers hundreds of ways to review your open-ended survey responses. Unfortunately, you don’t have the time to review each of these applications and decide on the best one.

We’ll fast-track your review process by walking you through 3 of the most popular Natural Language Processing use cases.

The word cloud allows you to identify the relative frequency of different keywords using an easily digestible visual.

For example, in a previous study, we’ve asked Americans to describe millennials in a single word. Their responses led to the following word cloud:

The bigger words in the chart appear more often in responses relative to the other words. In this case, these words tend to be negative—e.g. “lazy” and “spoiled.”

Now that you know how it works, you might be asking yourself, “How do word clouds help my survey analysis?”

Here are some of its key benefits:

  • It’s intuitive and easy to comprehend
  • It helps identify overall respondent sentiment and the specific factors that drive it
  • It provides direction for further analysis

But here are some of its drawbacks to consider:

  • It fails to measure each word’s value in and of itself
  • It allows irrelevant words to appear
  • When words appear similar in size, it becomes difficult to differentiate them

TFIDF focuses on how unique a word or a group of words are from a set of responses. It’s calculated as follows:

The closer the number is to 1, the more important the word becomes. What’s the reasoning behind this formula? If more people say something but don’t necessarily say it frequently, it’s easily neglected or missed—despite its value to your analysis. TFIDF solves this challenge by highlighting the most important unique words or group of words.

For example, let’s say we gathered responses from the question: “If you had $1,000 and you could save it, invest it, or use it to pay off bills, what would you do with it?”

We end up finding that many young adults would spend the money on school-related expenses as words like, “tuition” and “buying textbooks” have a high TFIDF rating.

Use TFIDF when you want to…

  • Drill down on the unique words that are used by a large sample of respondents
  • Identify a theme to focus on
  • Easily compare the relevance of a word or a group of words to others

Just keep the following pitfalls in mind…

  • The voices of a few respondents can get buried and neglected
  • If many respondents say something, but say it often, that word or group of words can receive a score that isn’t representative of its significance
  • When something is said by only a few respondents, infrequently, that word or group of words can receive a score that overstates its importance

Topic modeling is an advanced natural language processing technique that involves using algorithms to identify the main themes or ideas (topics) in a large amount of text data. Topic modeling algorithms examine text to look for clusters of similar words and then group them based on the statistics of how often the words appear and what the balance of topics is.

As a result, topic modeling helps you understand the key themes from your survey responses as well as the relative importance of each theme.

Let’s say we asked respondents whether or not they like swimming. We followed up with an open-ended question where the respondent can explain their answer. Our topic model produces the following chart, based on the clusters of similar words that appear in the open-ended responses.

Eight main topics emerge, based on the frequency of word clusters that appeared in our open-ended responses. Since we used a 95% confidence interval, there’s some variability in the weight of each topic, which the lines on either side of the topic represent.

As you can see, the topic clusters that appear for respondents who said they don’t like swimming are negative, while the ones who said they like swimming are positive. In our example above, “exhausting” was the most relevant topic when respondents disliked swimming. Meanwhile, “fun” was the most applicable topic when respondents said they liked swimming.

  • Identifies key topics that drive the respondent’s sentiment in a certain direction
  • Helps you understand each topic’s level of influence
  • Produces an intuitive and easy to understand visual

Here are some of its shortcomings:

  • Doesn’t account for the significance of each topic in and of itself
  • The survey creator specifies the number of topics they’d like to have in advance. This easily leads to human error; choosing an excessive number of topics creates less valuable ones while choosing an insufficient number leaves out potentially important topics
  • Becomes overwhelming and less meaningful if too many key topics are chosen

Deciding on the right application of Natural Language Processing isn’t simple. But choosing between these 3 use cases makes the process much easier. So go forward and embrace your free responses with confidence. You’ll uncover any and all of the key insights they provide.

Woman with red hair creating a survey on laptop

역할 또는 업계에서 피드백을 활용할 수 있도록 돕기 위해 디자인한 도구 키트를 살펴보세요.

A man and woman looking at an article on their laptop, and writing information on sticky notes

퇴사자 인터뷰 설문조사에서 올바른 질문을 하여 직원 감소율을 낮추세요. 직원 양식 작성기 도구와 템플릿으로 지금 시작하세요.

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맞춤 동의서 양식으로 필요한 허가를 받으세요. 지금 무료로 가입하여 동의서 양식 템플릿으로 간편하게 양식을 만드세요.

Woman reviewing information on her laptop

요청 양식을 수월하게 만들고 맞춤화하여 직원, 고객 등으로부터 요청을 받으세요. SurveyMonkey의 전문가가 작성한 템플릿으로 단 몇 분만에 시작할 수 있습니다.