There are many challenges to overcome when you need a study or interview for your research project in academic writing. One of these are the many different types of research bias that need to be considered because bias can highly influence the results of your study and thus deem it invalid. The following article will show you every type of research bias you could potentially encounter, give examples to explain it further, and how to avoid it.
Definition: Research bias
Research bias refers to any negative factors and flaws that distort empirical studies. Excellent studies seek to remove this type of influence that might pose hurdles to findings and conclusions. Eliminating confounding factors, flaws, and faulty conclusions is essential to producing quality work that’s accurate and applicable.
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Pre-trial research bias
Many research biases can influence a study before it is even conducted. These happen due to the researcher’s influence in phrasing the questions, sampling participants, or missing out on contributing factors.
Researcher bias
Researcher bias, or design bias, happens when the beliefs and opinions of the researcher influence how they phrase the questions, what exactly they ask for or in what form they conduct the study. Oftentimes, the researcher unconsciously chooses a setting that will lead to his desired results and this way causes errors in study design.
A way to avoid researcher bias is to ask more open-ended questions that do not tempt the participant to give a specific answer, or to have a second, independent person check your questions.
Selection bias
Selection bias occurs during the stage of selecting participants for your study. Possible influences can be how or where you sample them. There are a few subtypes of selection bias, which will be explained in the following, including ideas on how to avoid these errors in study design.
- Sampling or ascertainment bias happens when your selected participants are not representative of the whole population. To avoid sampling bias, you should watch out that your group of participants does represent the entire population, at least according to the factors relevant in your study.
- Attrition bias is when only people with the same characteristics drop out of the study, thus leaving it less representative for the whole. Avoiding attrition bias can be complicated because you cannot force participants to stay part of the survey. You can either try to convince them into staying or take their dropouts into your result analysis.
- Self-selection or volunteer bias refers to the circumstance that the people who volunteer to take part in the study all have the same or similar relevant characteristics. To avoid self-selection bias, simply sample randomly or check the important data in your participants’ vita to ensure representativeness.
- Survivorship bias is a type of research bias where the sampled participants only include people who have passed a certain trial beforehand. In some studies, this is done consciously. However, if the prior trial is not a requirement to become a participant, you should consider broadening your sampling.
- Nonresponse bias describes a condition when, in a survey, a certain group of people with similar characteristics does not answer the questions and thus makes the study less representative. This can be avoided by researching the reasons behind their nonresponse and remove those obstacles.
- Undercoverage bias refers to a situation where you sample participants from a subset of the population that is not representative for the whole, and you thus miss a certain piece of information that is characteristic for those left out. The only option to avoid this type of research bias is considering the possible factors that could determine the undercoverage.
Channeling bias
Channeling bias happens mostly in studies with non-randomized participants that are divided into groups. It is common practice in clinical trials to have an experimental group and a control group, which are sometimes selected by the staff. Therefore, it can happen that more participants with a higher probability of success end up in the experimental group, while participants with less likeliness to succeed end up in the control group.
To avoid this type of research bias, you may consider drawing the groups by lots or make sure the division is randomized in any other way.
Research bias during trial
The most common types of research bias happen during the trial of the study. As participants are only humans too, their answers can be dependent on external influences, individual experiences or social pressure. It is important to know which factors can influence your participants and reduce them to a minimum.
Information bias
Information bias, sometimes also called measurement bias, occurs when key study variables are inaccurately classified. This means that the information your participants give you might be influenced by different external or internal factors you might need to consider. There are a few subtypes of this kind of research bias, that will be explained in the following.
- Recall bias is the phenomenon that infrequent or special events are more likely to be remembered. However, as every person has different experiences and might also weight them differently, this leads to varying answers. If you want to avoid this, you should first consider the life of your participants and maybe ask them what led them to give a specific answer.
- Observer bias refers to the fact that people often see what they want or are expected to see. This warps their perception and thus the results of the study. To avoid this type of research bias, you should ask open-ended questions that cannot be answered with yes or no. Other than that, as the participant themselves does mostly not recognize they are biased, it is very difficult to do anything against it.
- Performance bias results from unequal treatment between groups in research. The Hawthorne effect, or observer effect, refers to the change of behavior participants show when they know they are being watched. The John Henry effect, on the other hand, explains that participants feel the need to compensate for the inequality between the groups. This can lead to a difference in motivation or general behavior between the two groups.
- Regression to the mean (RTM) happens mostly in studies that have more than one stage. The first stage tends to produce more extreme results due to possible nervousness of the participants or their need to do everything right. In the second stage, the participants are more relaxed and thus their answers might be more truthful, thus regressing to the mean of the population. To avoid this type of research bias, you could start the study with a first dummy stage that is not relevant to get the participants used to the setting and conduct follow-up surveys in the second stage for valid results.
Interviewer bias
Interviewer bias is a type of research bias where the reactions or behavior of the interviewer influences the participant. This can be due to their tone of voice, phrasing of questions, but also their body language and facial expressions that have an impact on their answers during surveys.
A way to avoid interviewer bias is to watch our behavior while conducting the interview and try to be as objective and neutral as possible.
Response bias
Response bias refers to the different things that can influence the answers of the participants. There are a few different subtypes of this research bias, which will be explained in the following.
- Acquiescence bias, also known as “yea-saying”, says that people are more likely to agree to a statement when asked a question than disagree. This is closely related to the social desirability bias because approving is considered polite and pleasing to the other person. A way to avoid this research bias is to phrase the questions in a way that the participants cannot just say yes or no, but have to elaborate their answer.
- Demand characteristics means that when participants know or guess the intent of questions in the study, they are more likely to give answers that will approve of the main question. This is why the actual theme of the study is mostly kept secret, or a fake topic is told to the participants.
- Social desirability bias is very common to happen because people feel the need to be socially accepted. This is why they will probably answer in a way that it follows norms of the society. Even if their actual opinion might differ from that, they will be hesitant to state an opinion that might not be socially accepted. To avoid this bias, you can conduct anonymous surveys online or via paper, so the participants do not feel pressured to answer in a certain way.
- Question order bias happens when the order in which you ask the questions influences their answers. Occasionally, the previous question gives context to the next, leading to either giving away your intention or lacking content, and thus miscommunication might happen. A way to avoid this type of research bias might be to carefully select your order of questions or test them on your friends and family to gain another opinion on this factor.
- Extreme responding mostly happens when your participants are indifferent to a topic or question. They will choose what they feel like at that moment, not considering it carefully. Sometimes participants will also exaggerate on their opinion subconsciously or to please the interviewer. Avoiding this kind of research bias can be difficult, but you could try to double-check their opinion by repeating their answer and asking again if this is what they meant.
- Courtesy bias happens due to the reluctance to give negative feedback. Especially in face to face or group interviews, participants might hold back on criticism to not hurt other people. This can be avoided by keeping your study anonymous or online, to have the participants give more truthful answers.
Cognitive bias
Cognitive bias stems from our inability to judge information completely objective. This causes us to weight different input in different ways because of our individual experiences or mindsets. There are a few subtypes of this kind of research bias, that will be explained in the following.
- Anchoring bias happens when our mind sticks to one piece of information, mostly given at the beginning of a conversation. It functions as an anchor and as the basis for the whole following conversation, influencing our answers. To avoid this bias, we have to double-check our thought process or, as an interviewer, mix up the order of questions. When the follow-up questions are less related to the first one, the interviewee might let go of their anchor.
- The framing effect appears when the question is not presented neutrally and the participant gets the impression that one option is positive and the other one negative. This is also related to the interviewer bias, as the way we phrase or emphasize something might indicate our own beliefs and thus lead the participant to a certain answer. Avoid this research bias by staying impartial and neutral in your phrasing and body language.
- The Actor-observer bias is a phenomenon, where when a person acts themselves, they tend to believe their actions are based on external influence. When they observe the act of other people, however, they link their actions more likely to their personal abilities. This is why people tend to evaluate themselves less positive than others or downplay their achievements. To avoid this kind of research bias, try to ask the participants what lead them to their beliefs or actions, or ask follow-up questions to find out about the causes yourself.
- Availability bias or availability heuristic describes the fact that we remember the most recent or vivid events best. This, however, also means that these events will have the biggest influence on the answers of your participants, clouding their judgement. To avoid this research bias, try asking them how they came to this conclusion to find out why they answer in a certain way. This reflection may help you and them recognize where their opinion is coming from and if it is objective and valid.
- Confirmation bias describes the phenomenon that humans always seek information that confirms their beliefs and neglect facts that contradict them. This is also the case for our memory, meaning that we remember facts supporting our view better than those contradicting them. A way to avoid this research bias is to confront the participants with information that is against their beliefs and see how they react to that or if it changes their opinion.
- The Halo Effect happens when we build our opinion of something based on a single trait. This can refer to people but also brands, items or specific actions. Avoiding this research bias is difficult because oftentimes we do not know what influenced our opinion, but being confronted with a contradicting opinion might help to clear this up.
- The Baader-Meinhof phenomenon, also known as “frequency illusion”, is when we acquire new information and suddenly seem to be confronted with it more often. This can be the case with a certain word or term, but also people, items, or brands. Thus, we may judge the frequency of something wrong because our focus on it shifted. Avoiding this bias is almost impossible because we cannot influence our perception. The only possibility is to note down our experiences to gain exact numbers that are valid.
Procedural bias
Procedural bias happens when the procedure of the study influences the results. This can, for example, happen when participants do not have enough time to think about survey questions properly, or when the sampled participants are not interested in the survey and thus answer more quickly to get it done. To avoid this type of research bias, you can consider having non-timed surveys or sampling your participants more fittingly.
Chronology bias
Chronology bias appears in long-term studies. It is caused by not considering the external change that influences the study when you watch development in people. Conducting long-term studies is thus very difficult because the change of environment or technical progress highly affects personal or skill development. This makes it harder to conclude whether the development is solely in the person themselves, or if the advancement of external factors contributed to the change in results.
Post-trial research bias
Even after you finished conducting your study, research bias can still affect your results. Whether the answers do not satisfy you or you realized that some information was not considered before your survey, even your opinion can influence the results. This is why during the step of analyzing the results you need to be wary of the following types of research bias.
Confounding
Confounding can happen when the researcher does not consider every factor that can possibly affect the study. Occasionally, you want to prove the connection of two circumstances, while the actual influence comes from a third external influence you did not consider.
To avoid confounding, you have to take in every factor that could possibly impact your study. However, this can be an endless search, which is often not even possible. Thus, it can help to note details about your participants’ life and later compare them to find possible influences afterward.
Analysis bias
Analysis bias happens when you tend to focus only on the data that confirms your hypothesis or perspective, while leaving negative results aside. This can happen either consciously or subconsciously and will warp the results of your study negatively.
Avoiding this bias is highly necessary and can happen through staying objective. You need to focus on the facts given in the answers by the participants and double check if you did not exclude any important information.
Publication bias
Publication bias refers to the fact that some studies will not get published if their results are not satisfying to the researcher. It can be caused by the fear of negative feedback or reduced sponsoring. When the sponsors hold back the study because the results do not fit them, it is called citation bias.
In the case of personal issues, it is important to be brave enough to state even unpleasant or unsatisfying results. When sponsors hold back a study, there may not be much you can do, except trying to persuade or convince them of the importance of the study.
How to avoid research bias
Knowing how to avoid any research bias is essential to keep your study valid and representative. While every bias may demand a different method to avoid it, there are a few general ones that apply to most types of research bias.
- The most important thing is to sample your participants randomly. Even when you need to seclude a certain group (age, social status, financial status, …), make sure that the rest is as diverse as possible. For example, if you conduct a study among people of a certain age, other factors like family background or wealth should be different in each participant.
- Try to keep a neutrality to your whole interview. This refers to the phrasing of your questions as well as your facial expression, body language and tone of voice while speaking. The environment of your interview might also influence the answers of the participant, for example if the surroundings distract them too much or if the time is convenient for them.
- When phrasing questions, make sure they are open-ended and not leading to a certain answer. This way, you can reduce many research biases stemming from personal interaction with the participant, such as social desirability bias.
- Include, if possible, personal data of the participants into your analysis. This way you can search for patterns of answers from interviewees with similar backgrounds or experiences.
- Use different types of sources and studies. This ensures that even if one study might be corrupted by bias, you have other ones to compare it to.
Especially in academic writing, you do not only need to be wary of research bias when conducting your study, but also when using existing studies as knowledge sources. Publication bias may be a big topic you might come across, leading you to wrong conclusions if contrary studies have never been published. However, knowing how all those different types of research bias work may also help you identify them or at least question every study a little before using it as a source.
Overview of all research bias articles
FAQs
Research bias is an umbrella term for many subtypes of influences that can warp the results of studies. As these flaws reduce the validity of results, researchers have to try their best to avoid bias in any study.
Research bias can influence a study before, during, and even after the trial. There are many factors contributing to how participants may answer questions and how you yourself view these results. Thus, it is important to know different types of research bias, to avoid them when conducting a study.
Although there are various countermeasures against the different types of research bias, you will most likely not be able to avoid it completely. This is because not every bias is consciously applied, and thus we may not even notice it happening.
The Hawthorne effect describes the phenomenon when participants of a study change their behavior after realizing they are being watched. This is why most studies are conducted by giving participants a pseudo-topic that is different from the actual main question, so they will not look into what the study is about.
The Baader-Meinhof phenomenon is a very common experience, where a piece of knowledge we recently acquired, seems to suddenly appear everywhere in our surroundings. This can be a word or an object or even a person. For example, after getting your driving license, you may see tuition cars more often on the streets than before.