Dictionary Definition
experiment
Noun
1 the act of conducting a controlled test or
investigation [syn: experimentation]
2 the testing of an idea; "it was an experiment
in living"; "not all experimentation is done in laboratories" [syn:
experimentation]
3 a venture at something new or different; "as an
experiment he decided to grow a beard"
Verb
1 to conduct a test or investigation; "We are
experimenting with the new drug in order to fight this
disease"
2 try something new, as in order to gain
experience; "Students experiment sexually"; "The composer
experimented with a new style" [syn: try out]
User Contributed Dictionary
see Experiment
English
Pronunciation
- /ɪkˈsper.ɪ.mənt/, /Ik"spEr.I.m@nt/
Noun
- A test under controlled conditions made to either demonstrate a known truth, examine the validity of a hypothesis, or determine the efficacy of something previously untried.
Translations
A test under controlled conditions
- Czech: pokus , experiment
- Dutch: experiment , proef
- Finnish: (tieteellinen) koe
- French: expérience
- German: Experiment , Versuch
- Hebrew: ניסוי
- Japanese: 実験 (じっけん, jikken)
- Portuguese: experimento , experiência/experiéncia
- Russian: эксперимент ''m', опыт
- Spanish: experimento
- Swedish: experiment
- Polish: doświadczenie (n), eksperyment (m)
- Telugu: ప్రయోగము (prayOgamu)
- Turkish: deney (n)
- ttbc Indonesian: eksperimen, percobaan
- ttbc Lithuanian: eksperimentas , bandymas
Verb
- To conduct an experiment.
Translations
To conduct an experiment
- Dutch: experimenteren
- Finnish: kokeilla, tehdä koe
- French: expérimenter
- German: experimentieren
- Japanese: 実験する (じっけんする, jikken-suru)
- Polish: eksperymentować, przeprowadzać doświadczenie
- Russian: экспериментировать, производить or проводить or ставить опыт
- Spanish: experimentar
- Swedish: experimentera
- ttbc Indonesian: eksperimen
- ttbc Lithuanian: eksperimentuoti
Dutch
Pronunciation
Noun
Swedish
Pronunciation
Noun
Extensive Definition
In scientific inquiry, an experiment (Latin: ex- periri, "of (or
from) trying") is a method of investigating particular types of
reserch questions or solving particular types of problems. The
experiment is a cornerstone in the empirical approach to
acquiring deeper knowledge about the world and
is used in both natural sciences as well as in social
sciences.
Design of experiments
An experiment can be thought of as a specific
type of method used in scientific inquiries, usually to study
casuality. Often the objective is to test a hypothesis: i.e. a
tentative explanation of a phenomena or mechanism of casuality. The
essens of an experiment is to introduce a change in a system (the
independet variable) and to study the effect of this change (the
dependent variable). Two fundamental considerations of experimental
desing are:
That the independent variable is the only factor
that varies systematically in the experiment; in other words, that
the experiment is appropriately controlled
- that confounding
variables are eliminated; and That the dependent variable truly
reflects the phenomenon under study (a question of validity)
and that the variable can be measured accurately (i.e., that
various types of experimental error, such as measurement
error can be eliminated).
In a very strict application of the experimental
method, hypotheses are tested by critical
experiments: ones that can falsify the hypothesis in
the case of a non-result (i.e., an experiment showing that the
independent variable did not affect the dependent variable as
predicted). Such pure applications are rare, however, in part
because a result can sometimes be challenged on the basis that an
experiment was not sufficiently controlled, that the dependent
variable was not valid, or that various forms of error compromised
the experiment. The scientific method, as a result, builds in the
need for reproducibility (usually
termed replication) and convergent
evidence (see also: external
validity).' The design of experiments attempts to balance the
requirements and limitations of the field of science in which one
works so that the experiment can provide the'' best conclusion
about the hypothesis being tested. In some sciences, such as
physics and chemistry, it is relatively
easy to meet the requirements that all measurements be made
objectively, and that all conditions can be kept controlled across
experimental trials. On the other hand, in other cases such as
biology, and medicine, it is often hard to
ensure that the conditions of an experiment are performed
consistently; and in the social
sciences, it may even be difficult to determine a method for
measuring the outcomes of an experiment in an objective
manner.
For this reason, sciences such as physics and
several other fields of natural
science are sometimes informally referred to as "hard
sciences", while social
sciences are sometimes informally referred to as "soft
sciences"; in an attempt to capture the idea that objective
measurements are often far easier in the former, and far more
difficult in the latter.
In addition, in the social sciences, the
requirement for a "controlled situation" may actually work against
the utility of the hypothesis in a more general situation. When the
desire is to test a hypothesis that works "in general", an
experiment may have a great deal of internal validity, in the sense
that it is valid in a highly controlled situation, while at the
same time lack external validity when the results of the experiment
are applied to a real world situation. One of the reasons why this
may happen is the Hawthorne
effect; another is that partial
equilibrium effects may not persist in general
equilibrium.
As a result of these considerations, experimental
design in the "hard" sciences tends to focus on the elimination of
extraneous effects, while experimental design in the "soft"
sciences focuses more on the problems of external validity, often
through the use of statistical methods.
Occasionally events occur naturally from which scientific evidence
can be drawn, which is the basis for natural
experiments. In such cases the problem of the scientist is to
evaluate the natural "design".
Controlled (Laboratory) experiments
Many hypotheses in sciences such as physics can
establish causality by noting that, until some phenomenon occurs,
nothing happens; then when the phenomenon occurs, a second
phenomenon is observed. But often in science, this situation is
difficult to obtain.
For example, in the old joke, someone claims that
they are snapping their fingers "to keep the tigers away"; and
justifies this behavior by saying "see - its working!" While this
"experiment" does not falsify the hypothesis "snapping fingers
keeps the tigers away", it does not really support the hypothesis -
not snapping your fingers keeps the tigers away as well.
To demonstrate a cause and effect hypothesis, an
experiment must often show that, for example, a phenomenon occurs
after a certain treatment is given to a subject, and that the
phenomenon does not occur in the absence of the treatment. (See
Baconian
method.)
A controlled experiment generally compares the
results obtained from an experimental sample against a control
sample, which is practically identical to the experimental sample
except for the one aspect whose effect is being tested. A good
example would be a drug trial. The sample or group receiving the
drug would be the experimental one; and the one receiving the
placebo would be the control one. In many laboratory experiments it
is good practice to have several replicate samples for the test
being performed and have both a positive
control and a negative
control. The results from replicate samples can often be
averaged, or if one of the replicates is obviously inconsistent
with the results from the other samples, it can be discarded as
being the result of an experimental error (some step of the test
procedure may have been mistakenly omitted for that sample). Most
often, tests are done in duplicate or triplicate. A positive
control is a procedure that is very similar to the actual
experimental test but which is known from previous experience to
give a positive result. A negative control is known to give a
negative result. The positive control confirms that the basic
conditions of the experiment were able to produce a positive
result, even if none of the actual experimental samples produce a
positive result. The negative control demonstrates the base-line
result obtained when a test does not produce a measurable positive
result; often the value of the negative control is treated as a
"background" value to be subtracted from the test sample results.
Sometimes the positive control takes the quadrant of a standard
curve.
An example that is often used in teaching
laboratories is a controlled protein assay. Students might be given a
fluid sample containing an unknown (to the student) amount of
protein. It is their job to correctly perform a controlled
experiment in which they determine the concentration of protein in
fluid sample (usually called the "unknown sample"). The teaching
lab would be equipped with a protein standard solution with a known
protein concentration. Students could make several positive control
samples containing various dilutions of the protein standard.
Negative control samples would contain all of the reagents for the
protein assay but no protein. In this example, all samples are
performed in duplicate. The assay is a colorimetric assay in which
a spectrophotometer
can measure the amount of protein in samples by detecting a colored
complex formed by the interaction of protein molecules and
molecules of an added dye. In the illustration, the results for the
diluted test samples can be compared to the results of the standard
curve (the blue line in the illustration) in order to determine an
estimate of the amount of protein in the unknown sample.
Controlled experiments can be performed when it
is difficult to exactly control all the conditions in an
experiment. In this case, the experiment begins by creating two or
more sample groups that are probabilistically equivalent, which
means that measurements of traits should be similar among the
groups and that the groups should respond in the same manner if
given the same treatment. This equivalency is determined by
statistical methods
that take into account the amount of variation between individuals
and the number of
individuals in each group. In fields such as microbiology and chemistry, where there is very
little variation between individuals and the group size is easily
in the millions, these statistical methods are often bypassed and
simply splitting a solution into equal parts is
assumed to produce identical sample groups.
Once equivalent groups have been formed, the
experimenter tries to treat them identically except for the one
variable that he or she wishes to isolate. Human
experimentation requires special safeguards against outside
variables such as the placebo effect. Such experiments are
generally double blind, meaning that neither the volunteer nor the
researcher knows which individuals are in the control group or the
experimental group until after all of the data has been collected.
This ensures that any effects on the volunteer are due to the
treatment itself and are not a response to the knowledge that he is
being treated.
In human experiments, a subject
(person) may be given a stimulus to which he or she
should respond. The goal of the experiment is to measure the
response to a given stimulus by a test
method.
Natural experiments
The term "experiment" usually implies a
controlled experiment, but sometimes controlled experiments are
prohibitively difficult or impossible. In this case researchers
resort to natural experiments, also called quasi-experiments.
Natural experiments rely solely on observations of the variables of the system under study, rather than
manipulation of just one or a few variables as occurs in controlled
experiments. To the degree possible, they attempt to collect data
for the system in such a way that contribution from all variables
can be determined, and where the effects of variation in certain
variables remain approximately constant so that the effects of
other variables can be discerned. The degree to which this is
possible depends on the observed correlation between explanatory
variables in the observed data. When these variables are not
well correlated, natural experiments can approach the power of
controlled experiments. Usually, however, there is some correlation
between these variables, which reduces the reliability of natural
experiments relative to what could be concluded if a controlled
experiment were performed. Also, because natural experiments
usually take place in uncontrolled environments, variables from
undetected sources are neither measured nor held constant, and
these may produce illusory correlations in variables under
study.
Much research in several important science disciplines, including
economics, political
science, geology,
paleontology,
ecology, meteorology, and astronomy, relies on
quasi-experiments. For example, in astronomy it is clearly
impossible, when testing the hypothesis "suns are collapsed clouds
of hydrogen", to start out with a giant cloud of hydrogen, and then
perform the experiment of waiting a few billion years for it to
form a sun. However, by observing various clouds of hydrogen in
various states of collapse, and other implications of the
hypothesis (for example, the presence of various spectral emissions
from the light of stars), we can collect data we require to support
the hypothesis. An early example of this type of experiment was the
first verification in the 1600s that light does not travel from
place to place instantaneously, but instead has a measurable speed.
Observation of the appearance of the moons of Jupiter were slightly
delayed when Jupiter was farther from Earth, as opposed to when
Jupiter was closer to Earth; and this phenomenon was used to
demonstrate that the difference in the time of appearance of the
moons was consistent with a measurable speed of light.
Observational studies
Observational studies are very much like
controlled experiments except that they lack probabilistic
equivalency between groups. These types of experiments often arise
in the area of medicine where, for ethical reasons, it is not
possible to create a truly controlled group. For example, one would
not want to deny all forms of treatment for a life-threatening
disease from one group of patients to evaluate the effectiveness of
another treatment on a different group of patients. The results of
observational studies are considered much less convincing than
those of designed experiments, as they are much more prone to
selection
bias. Researchers attempt to compensate for this with
complicated statistical methods such as propensity
score matching methods (see hierarchy
of evidence). See also quasi-empirical
methods
Field experiments
Field experiments are so named in order to draw a
contrast with laboratory
experiments. Often used in the social sciences, and especially
in economic analyses of education and health interventions, field
experiments have the advantage that outcomes are observed in a
natural setting rather than in a contrived laboratory environment.
However, like natural experiments, field experiments suffer from
the possibility of contamination: experimental conditions can be
controlled with more precision and certainty in the lab.
Examples
Quotes
- "We have to learn again that science without contact with experiments is an enterprise which is likely to go completely astray into imaginary conjecture." — Hannes Alfven
- "Today's scientists have substituted mathematics for experiments, and they wander off through equation after equation, and eventually build a structure which has no relation to reality." — Nikola Tesla
External links
- Lessons In Electric Circuits - Volume VI - Experiments
- http://www.socialresearchmethods.net/kb/desexper.htm Trochim, William M. Experimental Design. The Research Methods Knowledge Base, 2nd Edition. (version current as of July 11, 2006).
- Description of weird experiments (with film clips)
- Concept Development and Experimentation
- Shadish, William R., Thomas D. Cook, and Donald T. Campbell. 2002. Experimental and Quasi-experimental Designs for Generalized Causal Inference. Boston: Houghton Mifflin. 623 p.
- Guide for Understanding and Implementing Defense Experimentation (GUIDEx), The Technical Cooperation Program, 2006
experiment in Arabic: تجربة
experiment in Bosnian: Eksperiment
experiment in Bulgarian: Експеримент
experiment in Czech: Pokus
experiment in Danish: Eksperiment
experiment in German: Experiment
experiment in Estonian: Eksperiment
experiment in Modern Greek (1453-):
Πείραμα
experiment in Spanish: Experimento
experiment in Esperanto: Eksperimento
experiment in French: Méthode
expérimentale
experiment in Croatian: Eksperiment
experiment in Italian: Esperimento
experiment in Hebrew: ניסוי
experiment in Latvian: Eksperiments
experiment in Macedonian: Експеримент
experiment in Dutch: Experiment
experiment in Japanese: 実験
experiment in Low German: Experiment
experiment in Polish: Eksperyment
experiment in Portuguese: Experiência
científica
experiment in Russian: Эксперимент
experiment in Albanian: Eksperimenti
experiment in Simple English: Experiment
experiment in Slovak: Pokus
experiment in Serbian: Експеримент
experiment in Finnish: Koe
experiment in Swedish: Experiment
experiment in Turkish: Deney
experiment in Ukrainian: Експеримент
experiment in Samogitian: Miegėnėms
experiment in Chinese: 实验
Synonyms, Antonyms and Related Words
analysis, analyze, approach, assay, attempt, bid, bring to test, confirm, crack, cut and try, effort, endeavor, enquiry, essay, examination, examine, experimentation,
fling, gambit, give a try, give a
tryout, go, have a go,
inquiry, investigate, investigation, lick, move, offer, play around with, policy, practice upon, probe, procedure, proof, prove, put to trial, research, road-test, run a
sample, sample, scrutinize, search, shake down, shot, stab, step, stroke, strong bid, study, substantiate, taste, tentative, test, trial, trial and error, trial run,
try, try anything once, try
it on, try out, undertaking, validate, verify, weigh, whack