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About the test:

NLP(自然语言处理)在线测试使用基于方案的MCQ来评估候选者对NLP概念和技术的了解,例如文本分类,信息提取,情感分析和指定的实体识别。该测试评估了候选人将NLP技术应用于现实世界中的问题,场景以及设计有效的NLP模型的能力。

Covered skills:

  • 令牌化
  • 情感分析
  • 单词嵌入
  • 机器翻译
  • 文本摘要
  • 文本分类
  • 命名实体识别
  • 语言建模
  • 信息提取
  • 主题建模

9 reasons why
9 reasons why

Adaface 自然语言处理(NLP)测试 is the most accurate way to shortlist NLP工程师s



Reason #1

Tests for on-the-job skills

The 自然语言处理(NLP)测试 helps recruiters and hiring managers identify qualified candidates from a pool of resumes, and helps in taking objective hiring decisions. It reduces the administrative overhead of interviewing too many candidates and saves time by filtering out unqualified candidates at the first step of the hiring process.

The test screens for the following skills that hiring managers look for in candidates:

  • 有效象征文本的能力
  • 将文本分为不同类别的技能
  • 在文本中分析情感的能力
  • 熟练识别文本中指定的实体
  • 利用单词嵌入的专业知识
  • 熟练构建语言模型
  • 将文本从一种语言翻译成另一种语言的技巧
  • 能够从文本中提取信息
  • 生成文本摘要的专业知识
  • 执行主题建模的技巧
Reason #2

No trick questions

no trick questions

Traditional assessment tools use trick questions and puzzles for the screening, which creates a lot of frustration among candidates about having to go through irrelevant screening assessments.

View sample questions

The main reason we started Adaface is that traditional pre-employment assessment platforms are not a fair way for companies to evaluate candidates. At Adaface, our mission is to help companies find great candidates by assessing on-the-job skills required for a role.

Why we started Adaface
Reason #3

Non-googleable questions

We have a very high focus on the quality of questions that test for on-the-job skills. Every question is non-googleable and we have a very high bar for the level of subject matter experts we onboard to create these questions. We have crawlers to check if any of the questions are leaked online. If/ when a question gets leaked, we get an alert. We change the question for you & let you know.

How we design questions

这些只是我们库中有10,000多个问题的一个小样本。关于此的实际问题 自然语言处理(NLP)在线测试 将是不可行的.

🧐 Question

Medium

Hate Speech Detection Challenge
Text Classification
Data Imbalance
Solve
You are working on a project to detect hate speech in social media posts. Your initial model, a basic binary classification model, has achieved high accuracy during training, but it's not performing well on the validation set. You also notice that your dataset has significantly more non-hate-speech examples than hate-speech examples. Given this situation, which of the following strategies could likely improve the performance of your model?
A: Collect more data and retrain the model.
B: Introduce data augmentation techniques specifically for hate-speech examples.
C: Change the model architecture from binary classification to multi-class classification.
D: Replace all the words in the posts with their synonyms to increase the diversity of the data.
E: Remove the non-hate-speech examples from the dataset to focus on the hate-speech examples.

Easy

Identifying Fake Reviews
Text Classification
Solve
You are a data scientist at an online marketplace company. Your task is to develop a solution to identify fake reviews on your platform. You have a dataset where each review is marked as either 'genuine' or 'fake'. After developing an initial model, you find that it's accurately classifying 'genuine' reviews but performing poorly with 'fake' ones. Which of the following steps can likely improve your model's performance in this context?
A: Use a more complex model to capture the intricacies of 'fake' reviews.
B: Obtain more data to improve the overall performance of the model.
C: Implement a cost-sensitive learning approach, placing a higher penalty on misclassifying 'fake' reviews.
D: Translate the reviews to another language and then back to the original language to enhance their clarity.
E: Remove the 'genuine' reviews from your training set to focus on 'fake' reviews.

Medium

Sentence probability
N-Grams
Language Models
Solve
Consider the following pseudo code for calculating the probability of a sentence using a bigram language model:
 image
Assume that the bigram and unigram counts are as follows:

bigram_counts = {("i", "like"): 2, ("like", "cats"): 1, ("cats", "too"): 1}
unigram_counts = {"i": 2, "like": 2, "cats": 2, "too": 1}
vocabulary_size = 4

What is the probability of the sentence "I like cats too" using the bigram language model?

Easy

Tokenization and Stemming
Stemming
Solve
You are working on a natural language processing project and need to preprocess the text data for further analysis. Your task is to tokenize the text and apply stemming to the tokens. Assuming you have an English text corpus, which of the following combinations of tokenizer and stemmer would most likely result in the best balance between token granularity and generalization?

Medium

Word Sense Disambiguation
Solve
You have been provided with a pre-trained BERT model (pretrained_bert_model) and you need to perform Word Sense Disambiguation (WSD) on the word "bat" in the following sentence:

"The bat flew around the room."

You have also been provided with a function called cosine_similarity(vec1, vec2) that calculates the cosine similarity between two vectors.
Which of the following steps should you perform to disambiguate the word "bat" in the given sentence using the BERT model and cosine similarity?

1. Tokenize the sentence and pass it through the pre-trained BERT model.
2. Extract the embeddings of the word "bat" from the sentence.
3. Calculate the cosine similarity between the "bat" embeddings and each sense's representative words.
4. Choose the sense with the highest cosine similarity.
5. Calculate the Euclidean distance between the "bat" embeddings and each sense's representative words.
6. Choose the sense with the lowest Euclidean distance.
🧐 Question🔧 Skill

Medium

Hate Speech Detection Challenge
Text Classification
Data Imbalance

2 mins

Natural Language Processing
Solve

Easy

Identifying Fake Reviews
Text Classification

2 mins

Natural Language Processing
Solve

Medium

Sentence probability
N-Grams
Language Models

2 mins

Natural Language Processing
Solve

Easy

Tokenization and Stemming
Stemming

2 mins

Natural Language Processing
Solve

Medium

Word Sense Disambiguation

2 mins

Natural Language Processing
Solve
🧐 Question🔧 Skill💪 Difficulty⌛ Time
Hate Speech Detection Challenge
Text Classification
Data Imbalance
Natural Language Processing
Medium2 mins
Solve
Identifying Fake Reviews
Text Classification
Natural Language Processing
Easy2 mins
Solve
Sentence probability
N-Grams
Language Models
Natural Language Processing
Medium2 mins
Solve
Tokenization and Stemming
Stemming
Natural Language Processing
Easy2 mins
Solve
Word Sense Disambiguation
Natural Language Processing
Medium2 mins
Solve
Reason #4

1200+ customers in 75 countries

customers in 75 countries
Brandon

借助 Adaface,我们能够将初步筛选流程优化高达 75% 以上,为招聘经理和我们的人才招聘团队节省了宝贵的时间!


Brandon Lee, 人事主管, Love, Bonito

Reason #5

Designed for elimination, not selection

The most important thing while implementing the pre-employment 自然语言处理(NLP)在线测试 in your hiring process is that it is an elimination tool, not a selection tool. In other words: you want to use the test to eliminate the candidates who do poorly on the test, not to select the candidates who come out at the top. While they are super valuable, pre-employment tests do not paint the entire picture of a candidate’s abilities, knowledge, and motivations. Multiple easy questions are more predictive of a candidate's ability than fewer hard questions. Harder questions are often "trick" based questions, which do not provide any meaningful signal about the candidate's skillset.

Science behind Adaface tests
Reason #6

1 click candidate invites

Email invites: You can send candidates an email invite to the 自然语言处理(NLP)在线测试 from your dashboard by entering their email address.

Public link: You can create a public link for each test that you can share with candidates.

API or integrations: You can invite candidates directly from your ATS by using our pre-built integrations with popular ATS systems or building a custom integration with your in-house ATS.

invite candidates
Reason #7

Detailed scorecards & benchmarks

查看样本记分卡
Reason #8

High completion rate

Adaface tests are conversational, low-stress, and take just 25-40 mins to complete.

This is why Adaface has the highest test-completion rate (86%), which is more than 2x better than traditional assessments.

test completion rate
Reason #9

Advanced Proctoring


Learn more

About the 自然语言处理(NLP)测试

Why you should use 自然语言处理(NLP)测试?

The 自然语言处理(NLP)在线测试 makes use of scenario-based questions to test for on-the-job skills as opposed to theoretical knowledge, ensuring that candidates who do well on this screening test have the relavant skills. The questions are designed to covered following on-the-job aspects:

  • 理解和应用令牌化技术
  • 实施文本分类算法
  • 分析和解释文本中的情感
  • 识别和提取命名实体
  • 利用单词嵌入进行自然语言任务
  • 建立文本生成语言模型
  • 使用机器翻译在语言之间翻译文本
  • 从非结构化文本中提取有价值的信息
  • 创建文本数据的简明摘要
  • 通过主题建模发现文本中的主题和模式

Once the test is sent to a candidate, the candidate receives a link in email to take the test. For each candidate, you will receive a detailed report with skills breakdown and benchmarks to shortlist the top candidates from your pool.

What topics are covered in the 自然语言处理(NLP)测试?

  • 文本分类

    文本分类涉及分配预定义的基于其内容的类别或标签到文本数据。该技能在NLP中很重要,可以自动对大量文本进行分类,实现有效的信息检索和组织。

  • 情感分析

    情感分析旨在确定以情感语气或情感的方式来确定在文本,无论是正面的,负的还是中性的。该技能对于理解消费者意见,社交媒体情绪和客户反馈很有价值。

  • 命名的实体识别

    命名实体识别涉及识别和分类命名的实体,例如名称,日期,日期,日期,日期,日期,文本中的位置和组织。该技能有助于从非结构化文本中提取有价值的信息和关系,有助于信息提取和知识图生成等任务。

  • word embeddings

    word嵌入是捕获语义和语义和语义的矢量表示。句法关系。该技能使文本可以编码为数值向量,促进机器学习算法能够理解单词的含义和上下文。

  • 语言建模

    语言建模涉及序列预测下一个单词基于以前的单词。它在语音识别,机器翻译和自动完整之类的应用中至关重要,因为它有助于生成连贯和上下文适当的文本。

  • 机器翻译

    机器翻译是指文本的自动翻译或一种从一种语言到另一种语言的演讲。该技能对于打破语言障碍,实现跨不同文化和区域的沟通和信息交流至关重要。

  • 信息提取

    信息提取涉及从非结构化文本中自动提取结构化信息。该技能有助于完成诸如从简历中提取个人详细信息,从新闻文章中提取事实以及组织信息图形结构的任务。

  • 文本摘要

    文本摘要是凝结一个的过程在保留基本信息的同时,大量文本缩短了简洁的摘要。该技能对于生成执行摘要非常有用,提供了冗长的文档或文章的快速概述。

  • 主题建模

    主题建模是一种统计方法,可以在文档集合中识别潜在主题。此技能有助于发现文本数据中的隐藏模式和主题,从而实现了诸如内容建议,文档聚类和趋势分析之类的任务。

  • Full list of covered topics

    The actual topics of the questions in the final test will depend on your job description and requirements. However, here's a list of topics you can expect the questions for 自然语言处理(NLP)在线测试 to be based on.

    令牌化
    停止文字
    柠檬酸
    语音的一部分标记
    n-grams
    词袋
    TF-IDF
    文本分类算法
    天真的贝叶斯
    支持向量机
    神经网络
    情感分析方法
    基于词典的方法
    基于机器学习的方法
    命名实体识别技术
    基于规则的方法
    有条件的随机字段
    单词嵌入
    Word2Vec
    手套
    fastText
    语言建模技术
    n-gram模型
    复发性神经网络(RNN)
    SEQ2SEQ模型
    机器翻译方法
    统计机器翻译
    神经机器翻译
    信息提取方法
    命名实体提取
    关系提取
    文本摘要算法
    基于提取的摘要
    抽象性摘要
    主题建模算法
    潜在的Dirichlet分配(LDA)
    潜在语义分析(LSA)
    分层迪里奇过程(HDP)
    文档群集

What roles can I use the 自然语言处理(NLP)测试 for?

  • NLP工程师
  • 机器学习工程师
  • 人工智能研究员
  • 业务分析师
  • NLP研究科学家

How is the 自然语言处理(NLP)测试 customized for senior candidates?

For intermediate/ experienced candidates, we customize the assessment questions to include advanced topics and increase the difficulty level of the questions. This might include adding questions on topics like

  • 设计和开发基于NLP的应用程序
  • 应用高级技术进行文本预处理
  • 优化NLP模型以进行性能和可伸缩性
  • 处理大型文本数据集
  • 建造和部署NLP管道
  • 开发用于文本相似性和集群的算法
  • 通过扩展提高模型的准确性
  • 为NLP实施深度学习模型
  • 执行NLP任务的数据清洁和预处理
  • 分析和理解文本中的语言特征
Singapore government logo

招聘经理认为,通过小组面试中提出的技术问题,他们能够判断哪些候选人得分更高,并与得分较差的候选人区分开来。他们是 非常满意 通过 Adaface 筛选入围的候选人的质量。


85%
减少筛查时间

自然语言处理(NLP)测试 常见问题解答

我可以将多个技能结合在一起,为一个自定义评估吗?

是的,一点没错。自定义评估是根据您的职位描述进行的,并将包括有关您指定的所有必备技能的问题。

您是否有任何反交换或策略功能?

我们具有以下反交易功能:

  • 不可解决的问题
  • IP策略
  • Web Protoring
  • 网络摄像头Proctoring
  • 窃检测
  • 安全浏览器

阅读有关[Proctoring功能](https://www.adaface.com/proctoring)的更多信息。

如何解释考试成绩?

要记住的主要问题是评估是消除工具,而不是选择工具。优化了技能评估,以帮助您消除在技术上没有资格担任该角色的候选人,它没有进行优化以帮助您找到该角色的最佳候选人。因此,使用评估的理想方法是确定阈值分数(通常为55%,我们为您提供基准测试),并邀请所有在下一轮面试中得分高于门槛的候选人。

我可以使用该测试的经验水平?

每个ADAFACE评估都是为您的职位描述/理想候选角色定制的(我们的主题专家将从我们的10000多个问题的图书馆中选择正确的问题)。可以为任何经验级别定制此评估。

每个候选人都会得到同样的问题吗?

是的,这使您比较候选人变得容易得多。 MCQ问题的选项和问题顺序是随机的。我们有[抗欺骗/策略](https://www.adaface.com/proctoring)功能。在我们的企业计划中,我们还可以选择使用类似难度级别的问题创建多个版本的相同评估。

我是候选人。我可以尝试练习测试吗?

不,不幸的是,我们目前不支持实践测试。但是,您可以使用我们的[示例问题](https://www.adaface.com/questions)进行练习。

使用此测试的成本是多少?

您可以查看我们的[定价计划](https://www.adaface.com/pricing/)。

我可以免费试用吗?

我刚刚搬到了一个付费计划。我如何要求自定义评估?

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Ready to use the Adaface 自然语言处理(NLP)在线测试?
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40 min tests.
No trick questions.
Accurate shortlisting.
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